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Main Authors: Lau, Richard, Tylan-Tyler, Anthony, Yao, Lihan, Roberto, Rey de Castro, Taylor, Robert, Jones, Isaiah
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.17013
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author Lau, Richard
Tylan-Tyler, Anthony
Yao, Lihan
Roberto, Rey de Castro
Taylor, Robert
Jones, Isaiah
author_facet Lau, Richard
Tylan-Tyler, Anthony
Yao, Lihan
Roberto, Rey de Castro
Taylor, Robert
Jones, Isaiah
contents This paper describes a temporal-spatial model for video processing with special applications to processing event camera videos. We propose to study a conjecture motivated by our previous study of video processing with delay loop reservoir (DLR) neural network, which we call Temporal-Spatial Conjecture (TSC). The TSC postulates that there is significant information content carried in the temporal representation of a video signal and that machine learning algorithms would benefit from separate optimization of the spatial and temporal components for intelligent processing. To verify or refute the TSC, we propose a Visual Markov Model (VMM) which decompose the video into spatial and temporal components and estimate the mutual information (MI) of these components. Since computation of video mutual information is complex and time consuming, we use a Mutual Information Neural Network to estimate the bounds of the mutual information. Our result shows that the temporal component carries significant MI compared to that of the spatial component. This finding has often been overlooked in neural network literature. In this paper, we will exploit this new finding to guide our design of a delay-loop reservoir neural network for event camera classification, which results in a 18% improvement on classification accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2403_17013
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Temporal-Spatial Processing of Event Camera Data via Delay-Loop Reservoir Neural Network
Lau, Richard
Tylan-Tyler, Anthony
Yao, Lihan
Roberto, Rey de Castro
Taylor, Robert
Jones, Isaiah
Computer Vision and Pattern Recognition
Machine Learning
This paper describes a temporal-spatial model for video processing with special applications to processing event camera videos. We propose to study a conjecture motivated by our previous study of video processing with delay loop reservoir (DLR) neural network, which we call Temporal-Spatial Conjecture (TSC). The TSC postulates that there is significant information content carried in the temporal representation of a video signal and that machine learning algorithms would benefit from separate optimization of the spatial and temporal components for intelligent processing. To verify or refute the TSC, we propose a Visual Markov Model (VMM) which decompose the video into spatial and temporal components and estimate the mutual information (MI) of these components. Since computation of video mutual information is complex and time consuming, we use a Mutual Information Neural Network to estimate the bounds of the mutual information. Our result shows that the temporal component carries significant MI compared to that of the spatial component. This finding has often been overlooked in neural network literature. In this paper, we will exploit this new finding to guide our design of a delay-loop reservoir neural network for event camera classification, which results in a 18% improvement on classification accuracy.
title Temporal-Spatial Processing of Event Camera Data via Delay-Loop Reservoir Neural Network
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2403.17013