ROT-Harris:异步兴趣点检测的动态方法

S. Harrigan, S. Coleman, M. Ker, P. Yogarajah, Z. Fang, Chengdong Wu
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引用次数: 0

摘要

基于事件的视觉传感器是视觉信息获取和处理方式的一种范式转变。这些设备能够低延迟地传输代表场景动态的数据。此外,低功耗优势使传感器在有限功率场景中很受欢迎,例如高速机器人或机器视觉应用,这些应用希望视觉信息的延迟最小。这种视觉传感器的核心数据类型是“事件”,它是一种异步的逐像素信号,指示与该传感器在阵列上的空间位置相对应的某个实例的光强度变化。一种流行的基于事件的处理方法是将事件随时间映射到二维平面上,这与传统的成像技术相当。然而,本文提出了一种破坏性的事件数据处理方法,该方法使用基于树的过滤器框架,直接处理原始事件数据以提取与兴趣点特征相对应的事件,然后将其与哈里斯兴趣点方法相结合以分离特征。我们假设,由于树形结构包含与2D表面映射相同的空间信息,Harris可以直接应用于树的内容,而不需要转换到2D平面。结果表明,所提出的方法比其他最先进的方法性能更好,并且对运行时性能的影响有限。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ROT-Harris: A Dynamic Approach to Asynchronous Interest Point Detection
Event-based vision sensors are a paradigm shift in the way that visual information is obtained and processed. These devices are capable of low-latency transmission of data which represents the scene dynamics. Additionally, low-power benefits make the sensors popular in finite-power scenarios such as high-speed robotics or machine vision applications where latency in visual information is desired to be minimal. The core datatype of such vision sensors is the ‘event’ which is an asynchronous per-pixel signal indicating a change in light intensity at an instance in time corresponding to the spatial location of that sensor on the array. A popular approach to event-based processing is to map events onto a 2D plane over time which is comparable with traditional imaging techniques. However, this paper presents a disruptive approach to event data processing that uses a tree-based filter framework that directly processes raw event data to extract events corresponding to interest point features, which is then combined with a Harris interest point approach to isolate features. We hypothesise that since the tree structure contains the same spatial information as a 2D surface mapping, Harris may be applied directly to the content of the tree, bypassing the need for transformation to the 2D plane. Results illustrate that the proposed approach performs better than other state-of-the-art approaches with limited compromise on the run-time performance.
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