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Robust Event-Based Object Tracking Combining Correlation Filter and CNN Representation

机译:结合相关滤波器和CNN表示的基于事件的鲁棒对象跟踪

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摘要

Object tracking based on the event-based camera or dynamic vision sensor (DVS) remains a challenging task due to the noise events, rapid change of event-stream shape, chaos of complex background textures, and occlusion. To address the challenges, this paper presents a robust event-stream object tracking method based on correlation filter mechanism and convolutional neural network (CNN) representation. In the proposed method, rate coding is used to encode the event-stream object. Feature representations from hierarchical convolutional layers of a pre-trained CNN are used to represent the appearance of the rate encoded event-stream object. Results prove that the proposed 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, the correlation filter-based method has the advantage of high speed. The proposed approach will promote the potential applications of these event-based vision sensors in autonomous driving, robots and many other high-speed scenes.
机译:由于噪声事件,事件流形状的快速变化,复杂的背景纹理的混乱和遮挡,基于事件的摄像机或动态视觉传感器(DVS)的对象跟踪仍然是一项具有挑战性的任务。为了解决这些挑战,本文提出了一种基于相关过滤机制和卷积神经网络(CNN)表示的鲁棒事件流对象跟踪方法。在提出的方法中,速率编码用于编码事件流对象。来自预训练的CNN的分层卷积层的特征表示用于表示速率编码的事件流对象的外观。结果证明,该方法不仅在噪声事件,背景纹理复杂,遮挡和轨迹相交的许多复杂场景中均具有良好的跟踪性能,而且对可变比例,可变姿势和非刚性变形具有鲁棒性。另外,基于相关滤波器的方法具有高速的优点。所提出的方法将促进这些基于事件的视觉传感器在自动驾驶,机器人和许多其他高速场景中的潜在应用。

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