CVMar 17, 2018

Robust event-stream pattern tracking based on correlative filter

arXiv:1803.06490v1
Originality Highly original
AI Analysis

This work addresses tracking challenges for event-based vision in applications like self-driving and robotics, representing an incremental improvement with hybrid methods.

The paper tackles object tracking in event-based vision sensors by proposing a correlative filter method with rate coding and CNN features, achieving robust performance in complex scenes with noise, occlusion, and deformations, and offering high-speed tracking.

Object tracking based on retina-inspired and event-based dynamic vision sensor (DVS) is challenging for the noise events, rapid change of event-stream shape, chaos of complex background textures, and occlusion. To address these challenges, this paper presents a robust event-stream pattern tracking method based on correlative filter mechanism. In the proposed method, rate coding is used to encode the event-stream object in each segment. Feature representations from hierarchical convolutional layers of a deep convolutional neural network (CNN) are used to represent the appearance of the rate encoded event-stream object. The results prove that our method not only achieves good tracking performance in many complicated scenes with noise events, complex background textures, occlusion, and intersected trajectories, but also is robust to variable scale, variable pose, and non-rigid deformations. In addition, this correlative filter based event-stream tracking has the advantage of high speed. The proposed approach will promote the potential applications of these event-based vision sensors in self-driving, robots and many other high-speed scenes.

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