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Visual Tracking Using Neuromorphic Asynchronous Event-Based Cameras

机译:使用基于神经形态的异步事件的摄像机进行视觉跟踪

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摘要

This letter presents a novel computationally efficient and robust pattern tracking method based on a time-encoded, frame-free visual data. Recent interdisciplinary developments, combining inputs from engineering and biology, have yielded a novel type of camera that encodes visual information into a continuous stream of asynchronous, temporal events. These events encode temporal contrast and intensity locally in space and time. We show that the sparse yet accurately timed information is well suited as a computational input for object tracking. In this letter, visual data processing is performed for each incoming event at the time it arrives. The method provides a continuous and iterative estimation of the geometric transformation between the model and the events representing the tracked object. It can handle isometry, similarities, and affine distortions and allows for unprecedented real-time performance at equivalent frame rates in the kilohertz range on a standard PC. Furthermore, by using the dimension of time that is currently underexploited by most artificial vision systems, the method we present is able to solve ambiguous cases of object occlusions that classical frame-based techniques handle poorly.
机译:这封信提出了一种基于时间编码的无帧可视数据的新型计算有效且鲁棒的模式跟踪方法。最近跨学科的发展,结合了工程学和生物学的投入,产生了一种新型的摄像机,该摄像机将视觉信息编码为连续的异步时间事件流。这些事件在时空局部编码时间对比度和强度。我们表明,稀疏而准确的定时信息非常适合作为对象跟踪的计算输入。在这封信中,对每个传入事件在到达时都进行了可视数据处理。该方法提供了模型与代表被跟踪对象的事件之间的几何变换的连续和迭代估计。它可以处理等轴测图,相似度和仿射失真,并在标准PC上以千赫兹范围内的等效帧速率提供空前的实时性能。此外,通过使用大多数人工视觉系统目前尚未充分利用的时间维度,我们提出的方法能够解决传统的基于帧的技术处理不善的物体遮挡的模糊情况。

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