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
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Asynchronous Optimisation for Event-based Visual Odometry
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An Event-based Categorization Model Using Spatio-temporal Features in a Spiking Neural Network
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TL;DR: An event-based categorization model that makes full use of the precise timing information inherently present in the output of a bio-inspired vision sensor and utilizes event-driven processing to keep the form of address event representation (AER) has been introduced.
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•Posted Content
A Differentiable Recurrent Surface for Asynchronous Event-Based Data
TL;DR: In this paper, a grid of Long Short-Term Memory (LSTM) cells is proposed to learn end-to-end task-dependent event-surfaces, which shows good flexibility and expressiveness on optical flow estimation.
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A robust event-driven approach to always-on object recognition
Antoine Grimaldi,Victor Boutin,Sio-Hoi Ieng,Ryad Benosman,Laurent Perrinet +4 more
- 13 Jan 2022
TL;DR: A neuromimetic architecture able to perform always-on pattern recognition and an analogy between the HOTS algorithm and Spiking Neural Networks (SNN) is drawn, to modify the classification layer and remodel the offline pattern categorization method previously used into an online and event-driven one.
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