DocumentCode
742664
Title
Asynchronous Event-Based Multikernel Algorithm for High-Speed Visual Features Tracking
Author
Lagorce, Xavier ; Meyer, Cedric ; Sio-Hoi Ieng ; Filliat, David ; Benosman, Ryad
Author_Institution
Vision & Natural Comput. Group, Inst. Nat. de la Sante et de la Rech. Medicale, Paris, France
Volume
26
Issue
8
fYear
2015
Firstpage
1710
Lastpage
1720
Abstract
This paper presents a number of new methods for visual tracking using the output of an event-based asynchronous neuromorphic dynamic vision sensor. It allows the tracking of multiple visual features in real time, achieving an update rate of several hundred kilohertz on a standard desktop PC. The approach has been specially adapted to take advantage of the event-driven properties of these sensors by combining both spatial and temporal correlations of events in an asynchronous iterative framework. Various kernels, such as Gaussian, Gabor, combinations of Gabor functions, and arbitrary user-defined kernels, are used to track features from incoming events. The trackers described in this paper are capable of handling variations in position, scale, and orientation through the use of multiple pools of trackers. This approach avoids the N2 operations per event associated with conventional kernel-based convolution operations with N × N kernels. The tracking performance was evaluated experimentally for each type of kernel in order to demonstrate the robustness of the proposed solution.
Keywords
computer vision; convolution; correlation methods; image sensors; iterative methods; target tracking; Gabor functions; Gaussian functions; arbitrary user-defined kernels; asynchronous event-based multikernel algorithm; convolution operations; high-speed visual features tracking; iterative framework; multiple pools; neuromorphic dynamic vision sensor; orientation; position; real time; scale; spatial correlations; standard desktop PC; temporal correlations; update rate; Heuristic algorithms; Kernel; Real-time systems; Robot sensing systems; Shape; Tracking; Visualization; Event-based vision; neuromorphic sensing; visual tracking;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2014.2352401
Filename
6899691
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