论文标题

生物启发的视觉传感器的动态资源感知的角探测器

Dynamic Resource-aware Corner Detection for Bio-inspired Vision Sensors

论文作者

Mohamed, Sherif A. S., Yasin, Jawad N., Haghbayan, Mohammad-hashem, Miele, Antonio, Heikkonen, Jukka, Tenhunen, Hannu, Plosila, Juha

论文摘要

基于事件的摄像机是视觉设备,仅传输亮度,而亮度较低,并且超低功耗。这种特征使基于事件的摄像机在资源受限系统中的本地化和对象跟踪领域具有吸引力。由于此类摄像机中生成的事件的数量很大,因此从提高功能的准确性和减少计算负载的范围内,对传入事件的选择和过滤都是有益的。在本文中,我们提出了一种算法,用于在嵌入式系统上实时从一系列事件中检测异步角。该算法称为三层过滤harris或TLF-Harris算法。该算法基于事件的过滤策略,其目的是1)通过故意消除一些传入事件(即噪声和2)来提高准确性,以提高系统的实时性能,即通过删除具有有限准确性损失的不必要事件的每秒的投入事件来保留输入事件的持续吞吐量。反过来,Harris算法的近似值用于利用其高质量检测能力,具有低复杂性实现,以在嵌入式计算平台上实现无缝的实时性能。拟议的算法能够在邻居中选择最佳的角落候选人,并与传统的Harris得分相比,平均执行时间节省了59%。此外,就实时性能而言,我们的方法优于竞争方法,例如Efast,Eharris和Fa-Harris,并且在准确性方面超过了ARC*。

Event-based cameras are vision devices that transmit only brightness changes with low latency and ultra-low power consumption. Such characteristics make event-based cameras attractive in the field of localization and object tracking in resource-constrained systems. Since the number of generated events in such cameras is huge, the selection and filtering of the incoming events are beneficial from both increasing the accuracy of the features and reducing the computational load. In this paper, we present an algorithm to detect asynchronous corners from a stream of events in real-time on embedded systems. The algorithm is called the Three Layer Filtering-Harris or TLF-Harris algorithm. The algorithm is based on an events' filtering strategy whose purpose is 1) to increase the accuracy by deliberately eliminating some incoming events, i.e., noise, and 2) to improve the real-time performance of the system, i.e., preserving a constant throughput in terms of input events per second, by discarding unnecessary events with a limited accuracy loss. An approximation of the Harris algorithm, in turn, is used to exploit its high-quality detection capability with a low-complexity implementation to enable seamless real-time performance on embedded computing platforms. The proposed algorithm is capable of selecting the best corner candidate among neighbors and achieves an average execution time savings of 59 % compared with the conventional Harris score. Moreover, our approach outperforms the competing methods, such as eFAST, eHarris, and FA-Harris, in terms of real-time performance, and surpasses Arc* in terms of accuracy.

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