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arxiv 2010.08946 v1 pith:GZ7LPP57 submitted 2020-10-18 cs.CV

Temporal Binary Representation for Event-Based Action Recognition

classification cs.CV
keywords binarystrategytemporaldataseteventgesturemethodproposed
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper we present an event aggregation strategy to convert the output of an event camera into frames processable by traditional Computer Vision algorithms. The proposed method first generates sequences of intermediate binary representations, which are then losslessly transformed into a compact format by simply applying a binary-to-decimal conversion. This strategy allows us to encode temporal information directly into pixel values, which are then interpreted by deep learning models. We apply our strategy, called Temporal Binary Representation, to the task of Gesture Recognition, obtaining state of the art results on the popular DVS128 Gesture Dataset. To underline the effectiveness of the proposed method compared to existing ones, we also collect an extension of the dataset under more challenging conditions on which to perform experiments.

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