Deep Artificial Neural Network Models of Neural Encoding in Vision and Neurostimulation

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ISBN 13 :
Total Pages : 100 pages
Book Rating : 4.:/5 (126 download)

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Book Synopsis Deep Artificial Neural Network Models of Neural Encoding in Vision and Neurostimulation by : Elijah Douglas Christensen

Download or read book Deep Artificial Neural Network Models of Neural Encoding in Vision and Neurostimulation written by Elijah Douglas Christensen and published by . This book was released on 2018 with total page 100 pages. Available in PDF, EPUB and Kindle. Book excerpt: There is a significant need for more effective treatments for neurological and psychiatric diseases. Implantable neurostimulators are increasingly used as new therapeutic options for these diseases. This work will discuss our approach to mitigate current limitations in two types of implantable neurostimulators: Deep brain stimulation in treating Parkinson's disease and cortical prosthetics in vision. Deep brain stimulators (DBS) are typically configured to deliver therapeutic stimulation constantly, which can produce unavoidable side-effects and needlessly drains power. Modulating stimulation adaptively, or closed-loop stimulation, could mitigate these issues but requires methods to accurately read physiologically relevant brain states, preferably using only the already implanted electrodes. Another class of implanted neurostimulators, cortical prosthetics, rely on accurate predictions of neural activity in the targeted brain area for arbitrary stimuli. Current models used to predict neural activity in primary visual cortex only achieve 35% predictability overall and predictability declines in subsequent areas of visual processing. With a focus on DBS and cortical prosthetics, we highlight how deep artificial neural network (ANN) models can be leveraged as a tool in neuroscience for studying neural encoding and decoding. We apply an ANN model trained using supervised learning to decode sleep state continuously from "spectral fingerprints" contained in local field potential activity of DBS electrodes. Furthermore, we show that deep convolutional neural networks can be used to make more accurate predictions of cortical neural encoding of visual stimuli in both early (primary visual cortex) and late (inferior temporal cortex) stages of visual processing.

Models of Neural Networks IV

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Publisher : Springer Science & Business Media
ISBN 13 : 9780387951058
Total Pages : 438 pages
Book Rating : 4.9/5 (51 download)

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Book Synopsis Models of Neural Networks IV by : J. Leo van Hemmen

Download or read book Models of Neural Networks IV written by J. Leo van Hemmen and published by Springer Science & Business Media. This book was released on 2002 with total page 438 pages. Available in PDF, EPUB and Kindle. Book excerpt: This volume, with chapters by leading researchers in the field, is devoted to early vision and attention, that is, to the first stages of visual information processing. This state-of-the-art look at biological neural networks spans the many subfields, such as computational and experimental neuroscience; anatomy and physiology; visual information processing and scene segmentation; perception at illusory contours; control of visual attention; and paradigms for computing with spiking neurons.

The Relevance of the Time Domain to Neural Network Models

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Publisher : Springer
ISBN 13 : 9781461407232
Total Pages : 226 pages
Book Rating : 4.4/5 (72 download)

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Book Synopsis The Relevance of the Time Domain to Neural Network Models by : A. Ravishankar Rao

Download or read book The Relevance of the Time Domain to Neural Network Models written by A. Ravishankar Rao and published by Springer. This book was released on 2011-09-17 with total page 226 pages. Available in PDF, EPUB and Kindle. Book excerpt: A significant amount of effort in neural modeling is directed towards understanding the representation of information in various parts of the brain, such as cortical maps [6], and the paths along which sensory information is processed. Though the time domain is integral an integral aspect of the functioning of biological systems, it has proven very challenging to incorporate the time domain effectively in neural network models. A promising path that is being explored is to study the importance of synchronization in biological systems. Synchronization plays a critical role in the interactions between neurons in the brain, giving rise to perceptual phenomena, and explaining multiple effects such as visual contour integration, and the separation of superposed inputs. The purpose of this book is to provide a unified view of how the time domain can be effectively employed in neural network models. A first direction to consider is to deploy oscillators that model temporal firing patterns of a neuron or a group of neurons. There is a growing body of research on the use of oscillatory neural networks, and their ability to synchronize under the right conditions. Such networks of synchronizing elements have been shown to be effective in image processing and segmentation tasks, and also in solving the binding problem, which is of great significance in the field of neuroscience. The oscillatory neural models can be employed at multiple scales of abstraction, ranging from individual neurons, to groups of neurons using Wilson-Cowan modeling techniques and eventually to the behavior of entire brain regions as revealed in oscillations observed in EEG recordings. A second interesting direction to consider is to understand the effect of different neural network topologies on their ability to create the desired synchronization. A third direction of interest is the extraction of temporal signaling patterns from brain imaging data such as EEG and fMRI. Hence this Special Session is of emerging interest in the brain sciences, as imaging techniques are able to resolve sufficient temporal detail to provide an insight into how the time domain is deployed in cognitive function. The following broad topics will be covered in the book: Synchronization, phase-locking behavior, image processing, image segmentation, temporal pattern analysis, EEG analysis, fMRI analyis, network topology and synchronizability, cortical interactions involving synchronization, and oscillatory neural networks. This book will benefit readers interested in the topics of computational neuroscience, applying neural network models to understand brain function, extracting temporal information from brain imaging data, and emerging techniques for image segmentation using oscillatory networks

Artificial Neural Networks for Computer Vision

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Publisher : Springer Science & Business Media
ISBN 13 : 1461228344
Total Pages : 180 pages
Book Rating : 4.4/5 (612 download)

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Book Synopsis Artificial Neural Networks for Computer Vision by : Yi-Tong Zhou

Download or read book Artificial Neural Networks for Computer Vision written by Yi-Tong Zhou and published by Springer Science & Business Media. This book was released on 2012-12-06 with total page 180 pages. Available in PDF, EPUB and Kindle. Book excerpt: This monograph is an outgrowth of the authors' recent research on the de velopment of algorithms for several low-level vision problems using artificial neural networks. Specific problems considered are static and motion stereo, computation of optical flow, and deblurring an image. From a mathematical point of view, these inverse problems are ill-posed according to Hadamard. Researchers in computer vision have taken the "regularization" approach to these problems, where one comes up with an appropriate energy or cost function and finds a minimum. Additional constraints such as smoothness, integrability of surfaces, and preservation of discontinuities are added to the cost function explicitly or implicitly. Depending on the nature of the inver sion to be performed and the constraints, the cost function could exhibit several minima. Optimization of such nonconvex functions can be quite involved. Although progress has been made in making techniques such as simulated annealing computationally more reasonable, it is our view that one can often find satisfactory solutions using deterministic optimization algorithms.

Deep Learning in Computer Vision

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Publisher : CRC Press
ISBN 13 : 135100381X
Total Pages : 322 pages
Book Rating : 4.3/5 (51 download)

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Book Synopsis Deep Learning in Computer Vision by : Mahmoud Hassaballah

Download or read book Deep Learning in Computer Vision written by Mahmoud Hassaballah and published by CRC Press. This book was released on 2020-03-23 with total page 322 pages. Available in PDF, EPUB and Kindle. Book excerpt: Deep learning algorithms have brought a revolution to the computer vision community by introducing non-traditional and efficient solutions to several image-related problems that had long remained unsolved or partially addressed. This book presents a collection of eleven chapters where each individual chapter explains the deep learning principles of a specific topic, introduces reviews of up-to-date techniques, and presents research findings to the computer vision community. The book covers a broad scope of topics in deep learning concepts and applications such as accelerating the convolutional neural network inference on field-programmable gate arrays, fire detection in surveillance applications, face recognition, action and activity recognition, semantic segmentation for autonomous driving, aerial imagery registration, robot vision, tumor detection, and skin lesion segmentation as well as skin melanoma classification. The content of this book has been organized such that each chapter can be read independently from the others. The book is a valuable companion for researchers, for postgraduate and possibly senior undergraduate students who are taking an advanced course in related topics, and for those who are interested in deep learning with applications in computer vision, image processing, and pattern recognition.

Hierarchical Neural Networks for Image Interpretation

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Publisher : Springer
ISBN 13 : 3540451692
Total Pages : 230 pages
Book Rating : 4.5/5 (44 download)

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Book Synopsis Hierarchical Neural Networks for Image Interpretation by : Sven Behnke

Download or read book Hierarchical Neural Networks for Image Interpretation written by Sven Behnke and published by Springer. This book was released on 2003-11-18 with total page 230 pages. Available in PDF, EPUB and Kindle. Book excerpt: Human performance in visual perception by far exceeds the performance of contemporary computer vision systems. While humans are able to perceive their environment almost instantly and reliably under a wide range of conditions, computer vision systems work well only under controlled conditions in limited domains. This book sets out to reproduce the robustness and speed of human perception by proposing a hierarchical neural network architecture for iterative image interpretation. The proposed architecture can be trained using unsupervised and supervised learning techniques. Applications of the proposed architecture are illustrated using small networks. Furthermore, several larger networks were trained to perform various nontrivial computer vision tasks.

Spherical NeurO(n)s for Geometric Deep Learning

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Publisher : Linköping University Electronic Press
ISBN 13 : 9180756808
Total Pages : 48 pages
Book Rating : 4.1/5 (87 download)

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Book Synopsis Spherical NeurO(n)s for Geometric Deep Learning by : Pavlo Melnyk

Download or read book Spherical NeurO(n)s for Geometric Deep Learning written by Pavlo Melnyk and published by Linköping University Electronic Press. This book was released on 2024-09-03 with total page 48 pages. Available in PDF, EPUB and Kindle. Book excerpt: Felix Klein’s Erlangen Programme of 1872 introduced a methodology to unify non-Euclidean geometries. Similarly, geometric deep learning (GDL) constitutes a unifying framework for various neural network architectures. GDL is built from the first principles of geometry—symmetry and scale separation—and enables tractable learning in high dimensions. Symmetries play a vital role in preserving structural information of geometric data and allow models (i.e., neural networks) to adjust to different geometric transformations. In this context, spheres exhibit a maximal set of symmetries compared to other geometric entities in Euclidean space. The orthogonal group O(n) fully encapsulates the symmetry structure of an nD sphere, including both rotational and reflection symmetries. In this thesis, we focus on integrating these symmetries into a model as an inductive bias, which is a crucial requirement for addressing problems in 3D vision as well as in natural sciences and their related applications. In Paper A, we focus on 3D geometry and use the symmetries of spheres as geometric entities to construct neurons with spherical decision surfaces—spherical neurons—using a conformal embedding of Euclidean space. We also demonstrate that spherical neuron activations are non-linear due to the inherent non-linearity of the input embedding, and thus, do not necessarily require an activation function. In addition, we show graphically, theoretically, and experimentally that spherical neuron activations are isometries in Euclidean space, which is a prerequisite for the equivariance contributions of our subsequent work. In Paper B, we closely examine the isometry property of the spherical neurons in the context of equivariance under 3D rotations (i.e., SO(3)-equivariance). Focusing on 3D in this work and based on a minimal set of four spherical neurons (one learned spherical decision surface and three copies), the centers of which are rotated into the corresponding vertices of a regular tetrahedron, we construct a spherical filter bank. We call it a steerable 3D spherical neuron because, as we verify later, it constitutes a steerable filter. Finally, we derive a 3D steerability constraint for a spherical neuron (i.e., a single spherical decision surface). In Paper C, we present a learnable point-cloud descriptor invariant under 3D rotations and reflections, i.e., the O(3) actions, utilizing the steerable 3D spherical neurons we introduced previously, as well as vector neurons from related work. Specifically, we propose an embedding of the 3D steerable neurons into 4D vector neurons, which leverages end-to-end training of the model. The resulting model, termed TetraSphere, sets a new state-of-the-art performance classifying randomly rotated real-world object scans. Thus, our results reveal the practical value of steerable 3D spherical neurons for learning in 3D Euclidean space. In Paper D, we generalize to nD the concepts we previously established in 3D, and propose O(n)-equivariant neurons with spherical decision surfaces, which we call Deep Equivariant Hyper-spheres. We demonstrate how to combine them in a network that directly operates on the basis of the input points and propose an invariant operator based on the relation between two points and a sphere, which as we show, turns out to be a Gram matrix. In summary, this thesis introduces techniques based on spherical neurons that enhance the GDL framework, with a specific focus on equivariant and invariant learning on point sets.

Neural Network Models of Vector Coding, Learning, and Trajectory Formation During Planned and Reactive Arm and Eye Movements

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Publisher :
ISBN 13 :
Total Pages : 37 pages
Book Rating : 4.:/5 (227 download)

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Book Synopsis Neural Network Models of Vector Coding, Learning, and Trajectory Formation During Planned and Reactive Arm and Eye Movements by : Stephen Grossberg

Download or read book Neural Network Models of Vector Coding, Learning, and Trajectory Formation During Planned and Reactive Arm and Eye Movements written by Stephen Grossberg and published by . This book was released on 1989 with total page 37 pages. Available in PDF, EPUB and Kindle. Book excerpt: Contemporary neural network models provide insights into some of the organizational principles that govern biological sensory-motor systems, and offer a level of computational precision that enables sharp comparisons and contrasts to be made between different sensory-motor systems. The capacity of these models to clarify, integrate, and predict behavioral and neural data is predicated upon the coordinated use of theoretical, mathematical, computational and empirical tools in a manner that reveals many more constraints on brain design than empirical tools alone. No single experimental paradigm in the behavioral and brain sciences provides sufficiently many data to uniquely characterize a neural system. Interdisciplinary theoretical and empirical approaches that can coordinate and discover both top-down and bottom-up constraints at multiple levels of behavioral and neural organization provide a much greater level of guidance towards characterizing brain designs. The present chapter takes as its point of departure one important design principle that has been clarified by such an interdisciplinary approach. This is the principle of vector encoding that has been described, for example, in both the control of saccadic eye movements by the superior colliculus and the control of arm movements by the motor cortex. Keywords: Neural networks; Eye movement; Arm movement; Robotics; Self-organization; Learning; Trajectory formation; Planning; Vector coding. (JHD).

Neural Network Models of Visual Learning

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ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (133 download)

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Book Synopsis Neural Network Models of Visual Learning by : Chengxu Zhuang

Download or read book Neural Network Models of Visual Learning written by Chengxu Zhuang and published by . This book was released on 2022 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Humans show remarkable ability in not only recognizing the complicated visual environment surrounding them but also efficiently learning from this environment. The ventral visual stream underlies this critical ability and is currently best modeled by deep neural networks both quantitatively and qualitatively. However, such networks have remained implausible as a model of the development of the ventral stream, in part because they are trained with supervised methods requiring many more labels than are accessible to infants during development. In this dissertation, we first propose strong learning algorithms that learn from totally unlabelled or only partially labelled data. Then, we show that these algorithms together have largely closed this gap. We find that neural network models learned with deep unsupervised contrastive embedding methods achieve neural prediction accuracy in multiple ventral visual cortical areas that equals or exceeds that of models derived using today's best supervised methods, even when trained solely with real human child developmental data collected from head-mounted cameras, despite the fact that these datasets are noisy and limited. The proposed semi-supervised method has also proven to leverage small numbers of labelled examples to produce representations with substantially improved error-pattern consistency to human behavior. Furthermore, we propose two learning benchmarks measuring how well unsupervised models are able to predict human visual learning effects in both real-time and life-long timescales. Testing multiple high-performing unsupervised learning algorithms at both time-scales, we show how specific algorithm designs are helping matching the human learning results. Taken together, these results illustrate one of the first uses of unsupervised learning to provide a quantitative model of a multi-area cortical brain system, and present a strong candidate for a biologically-plausible computational theory of primate sensory learning. In addition to this, we also present models of other functions or species, serving as pre-steps of extending the models of visual learning to these domains.

Cognitive and Neural Modelling for Visual Information Representation and Memorization

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Publisher : CRC Press
ISBN 13 : 1000574652
Total Pages : 183 pages
Book Rating : 4.0/5 (5 download)

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Book Synopsis Cognitive and Neural Modelling for Visual Information Representation and Memorization by : Limiao Deng

Download or read book Cognitive and Neural Modelling for Visual Information Representation and Memorization written by Limiao Deng and published by CRC Press. This book was released on 2022-04-24 with total page 183 pages. Available in PDF, EPUB and Kindle. Book excerpt: Focusing on how visual information is represented, stored and extracted in the human brain, this book uses cognitive neural modeling in order to show how visual information is represented and memorized in the brain. Breaking through traditional visual information processing methods, the author combines our understanding of perception and memory from the human brain with computer vision technology, and provides a new approach for image recognition and classification. While biological visual cognition models and human brain memory models are established, applications such as pest recognition and carrot detection are also involved in this book. Given the range of topics covered, this book is a valuable resource for students, researchers and practitioners interested in the rapidly evolving field of neurocomputing, computer vision and machine learning.

Neuro-vision Systems

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Publisher : New York : IEEE Press
ISBN 13 :
Total Pages : 584 pages
Book Rating : 4.F/5 ( download)

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Book Synopsis Neuro-vision Systems by : Madan M. Gupta

Download or read book Neuro-vision Systems written by Madan M. Gupta and published by New York : IEEE Press. This book was released on 1994 with total page 584 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Deep Neural Network Models of Visual Cognition

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Publisher :
ISBN 13 : 9789464219838
Total Pages : 0 pages
Book Rating : 4.2/5 (198 download)

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Book Synopsis Deep Neural Network Models of Visual Cognition by : Lynn K.A. Sörensen

Download or read book Deep Neural Network Models of Visual Cognition written by Lynn K.A. Sörensen and published by . This book was released on 2023 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Coding the Presence of Visual Objects in a Recurrent Neural Network of Visual Cortex

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Publisher :
ISBN 13 :
Total Pages : pages
Book Rating : 4.:/5 (695 download)

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Book Synopsis Coding the Presence of Visual Objects in a Recurrent Neural Network of Visual Cortex by :

Download or read book Coding the Presence of Visual Objects in a Recurrent Neural Network of Visual Cortex written by and published by . This book was released on 2006 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Before we can recognize a visual object our visual system has to segregate it from its background. This requires a fast mechanism for establishing the presence and location of objects independent of their identity. Recently, border-ownership neurons were recorded in monkey visual cortex which might be involved in this task Zhou et al. (2000). Border-ownership neurons respond with increased rates when an object surface extends to one specific side of the contour they encode. Conversely, the rate decreases when the contour belongs to an object extending to the other side. This selectivity for object position relative to a contour is called border-ownership. Zhou et al. (2000) found border-ownership neurons that encode oriented contrast edges or lines in areas V1, V2, and V4 of visual cortex in awake monkeys. In order to explain the basic mechanisms required for fast coding of object presence I developed a neural network model of visual cortex consisting of these three areas: - Area 1: encoding orientation contours - Area 2: encoding curvatures - detecting the presence of stimulus objects In my model feed-forward and lateral connections support coding of Gestalt properties including similarity, good continuation and convexity. Model neurons of the highest area (Area-3) respond to the presence of an object and encode its position, invariant of its form. Feedback connections from Area-3 to Area-1 facilitate orientation detectors activated by contours belonging to potential objects, and thus generate the experimentally observed border-ownership property. Border-ownership feedback is transmitted directly to neurons encoding convex contours of an object and indirectly via lateral connections into concavities. My simulations show that the border-ownership connections of my model can be learned with Hebbian learning. This confirms my networks architecture. In conclusion, my network is an encompassing model bringing together several aspects of object detection and coding. The.

Neural Computation of Pattern Motion

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Publisher : MIT Press
ISBN 13 : 9780262193290
Total Pages : 196 pages
Book Rating : 4.1/5 (932 download)

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Book Synopsis Neural Computation of Pattern Motion by : Margaret Euphrasia Sereno

Download or read book Neural Computation of Pattern Motion written by Margaret Euphrasia Sereno and published by MIT Press. This book was released on 1993 with total page 196 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book describes a neurally based model, implemented as a connectionist network, of how the aperture problem is solved.

Cortical Neural Network Models of Visual Motion Perception for Decision-Making and Reactive Navigation

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Publisher :
ISBN 13 : 9781339830193
Total Pages : 212 pages
Book Rating : 4.8/5 (31 download)

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Book Synopsis Cortical Neural Network Models of Visual Motion Perception for Decision-Making and Reactive Navigation by : Michael Beyeler

Download or read book Cortical Neural Network Models of Visual Motion Perception for Decision-Making and Reactive Navigation written by Michael Beyeler and published by . This book was released on 2016 with total page 212 pages. Available in PDF, EPUB and Kindle. Book excerpt: Animals use vision to traverse novel cluttered environments with apparent ease. Evidence suggests that the mammalian brain integrates visual motion cues across a number of remote but interconnected brain regions that make up a visual motion pathway. Although much is known about the neural circuitry that is concerned with motion perception in the Primary Visual Cortex (V1) and the Middle Temporal area (MT), little is known about how relevant perceptual variables might be represented in higher-order areas of the motion pathway, and how neural activity in these areas might relate to the behavioral dynamics of locomotion.The main goal of this dissertation is to investigate the computational principles that the mammalian brain might be using to organize low-level motion signals into distributed representations of perceptual variables, and how neural activity in the motion pathway might mediate behavior in reactive navigation tasks. I first investigated how the aperture problem, a fundamental conceptual challenge encountered by all low-level motion systems, can be solved in a spiking neural network model of V1 and MT (consisting of 153,216 neurons and 40 million synapses), relying solely on dynamics and properties gleaned from known electrophysiological and neuroanatomical evidence, and how this neural activity might influence perceptual decision-making. Second, when used with a physical robot performing a reactive navigation task in the real world, I found that the model produced behavioral trajectories that closely matched human psychophysics data. Essential to the success of these studies were software implementations that could execute in real time, which are freely and openly available to the community. Third, using ideas from the efficient-coding and free-energy principles, I demonstrated that a variety of response properties of neurons in the dorsal sub-region of the Medial Superior Temporal area (MSTd) area could be derived from MT-like input features. This finding suggests that response properties such as 3D translation and rotation selectivity, complex motion perception, and heading selectivity might simply be a by-product of MSTd neurons performing dimensionality reduction on their inputs. The hope is that these studies will not only further our understanding of how the brain works, but also lead to novel algorithms and brain-inspired robots capable of outperforming current artificial systems.

Towards The Deep Model

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Publisher :
ISBN 13 :
Total Pages : 186 pages
Book Rating : 4.:/5 (981 download)

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Book Synopsis Towards The Deep Model by : Panqu Wang

Download or read book Towards The Deep Model written by Panqu Wang and published by . This book was released on 2017 with total page 186 pages. Available in PDF, EPUB and Kindle. Book excerpt: Understanding how visual recognition is achieved in the human brain is one of the most fundamental questions in vision research. In this thesis I seek to tackle this problem from a neurocomputational modeling perspective. More specifically, I build machine learning-based models to simulate and explain cognitive phenomena related to human visual recognition, and I improve computational models using brain-inspired principles to excel at computer vision tasks. I first describe how a neurocomputational model ("The Model", TM, (Cottrell & Hsiao, 2011)) can be applied to explain the modulation of visual experience on the performance of subordinate-level face and object recognition. Next, by introducing a mixture-of-experts structure in the model, I show that TM can be used to simulate the development of hemispheric lateralization of face processing. In addition, I extend TM to "The Deep Model" (TDM) by coupling it with deep learning techniques, and use TDM to explain the peripheral vision advantage in human scene recognition. Furthermore, I show the performance of these computational methods can be improved by introducing realistic constraints based on the human brain. By combining unsupervised feature learning principles with the Gnostic Fields theory of how the brain performs object recognition across the ventral visual pathway, I show a biologically-inspired model can develop realistic features of the early visual cortex, while performing well on object recognition datasets. By designing better encoding and decoding strategies in the deep neural network, I demonstrate that our system achieves the state-of-the-art performance on pixel-level semantic segmentation task on many popular computer vision benchmarks.

Think local, act global: robust and real-time movement encoding in spiking neural networks using neuromorphic hardware

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Publisher :
ISBN 13 :
Total Pages : 0 pages
Book Rating : 4.:/5 (13 download)

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Book Synopsis Think local, act global: robust and real-time movement encoding in spiking neural networks using neuromorphic hardware by : Carlo Michaelis

Download or read book Think local, act global: robust and real-time movement encoding in spiking neural networks using neuromorphic hardware written by Carlo Michaelis and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: It is still a mystery how information is processed in the brain, dynamically and reliably at the same time, in particular when considering that a central nervous system operates mainly with information that is processed locally at and between single neurons. To analyze how movement could be represented in the brain, I aimed to find new approaches for solving basic neural encoding problems with local-only mechanisms, performed on the neuromorphic hardware Loihi. The theoretical hierarchical motor selection and execution (HMSE) model suggests biologically plausible mechanisms for movement enc...