Journal Article10.1109/TPAMI.2016.2574707
HOTS: A Hierarchy of Event-Based Time-Surfaces for Pattern Recognition
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TL;DR: The central concept is to use the rich temporal information provided by events to create contexts in the form of time-surfaces which represent the recent temporal activity within a local spatial neighborhood and it is demonstrated that this concept can robustly be used at all stages of an event-based hierarchical model.
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Abstract: This paper describes novel event-based spatio-temporal features called time-surfaces and how they can be used to create a hierarchical event-based pattern recognition architecture. Unlike existing hierarchical architectures for pattern recognition, the presented model relies on a time oriented approach to extract spatio-temporal features from the asynchronously acquired dynamics of a visual scene. These dynamics are acquired using biologically inspired frameless asynchronous event-driven vision sensors. Similarly to cortical structures, subsequent layers in our hierarchy extract increasingly abstract features using increasingly large spatio-temporal windows. The central concept is to use the rich temporal information provided by events to create contexts in the form of time-surfaces which represent the recent temporal activity within a local spatial neighborhood. We demonstrate that this concept can robustly be used at all stages of an event-based hierarchical model. First layer feature units operate on groups of pixels, while subsequent layer feature units operate on the output of lower level feature units. We report results on a previously published 36 class character recognition task and a four class canonical dynamic card pip task, achieving near 100 percent accuracy on each. We introduce a new seven class moving face recognition task, achieving 79 percent accuracy.
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Citations
Feature Representation and Compression Methods for Event-Based Data
01 Mar 2023
TL;DR: Wang et al. as discussed by the authors proposed two event-based data compression methods by analyzing the statistical features of the event characteristic parameters, which are improved by 17.93% and 14.92% compared with the general encoding method and Spike Coding.
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Spatiotemporal feature learning for event-based vision
TL;DR: This work proposes a novel spatiotemporal feature representation learning algorithm based on slow feature analysis (SFA), and finds that the obtained feature representations are able to exploit the high temporal resolution of such event-based cameras in generating better feature tracks.
Event Transformer+. A multi-purpose solution for efficient event data processing
TL;DR: In this article, a patch-based event representation and a more robust backbone are proposed to improve the accuracy of event-data sparsity, while still benefiting from event data sparsity.
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The Challenges Ahead for Bio-inspired Neuromorphic Event Processors: How Memristors Dynamic Properties Could Revolutionize Machine Learning
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