Event-Based Visual Flow

Ryad Benosman(University of Genoa), Charles De Clercq(Italian Institute of Technology), Xavier Lagorce(Institut de la Vision), Sio-Hoï Ieng(Institut de la Vision), Chiara Bartolozzi(Italian Institute of Technology)
IEEE Transactions on Neural Networks and Learning Systems
September 5, 2013
Cited by 399

Abstract

This paper introduces a new methodology to compute dense visual flow using the precise timings of spikes from an asynchronous event-based retina. Biological retinas, and their artificial counterparts, are totally asynchronous and data-driven and rely on a paradigm of light acquisition radically different from most of the currently used frame-grabber technologies. This paper introduces a framework to estimate visual flow from the local properties of events' spatiotemporal space. We will show that precise visual flow orientation and amplitude can be estimated using a local differential approach on the surface defined by coactive events. Experimental results are presented; they show the method adequacy with high data sparseness and temporal resolution of event-based acquisition that allows the computation of motion flow with microsecond accuracy and at very low computational cost.


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