基于事件的神经形态计算机视觉应用调查

Information Pub Date : 2024-08-09 DOI:10.3390/info15080472
Dario Cazzato, Flavio Bono
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引用次数: 0

摘要

传统的帧式摄像头尽管在计算机视觉领域非常有效和常用,但也存在一些局限性,如延迟高、动态范围低、功耗高和运动模糊。二十年来,研究人员一直在探索神经形态相机,这种相机的工作原理与传统的基于帧的相机不同,它模仿生物视觉系统,以增强数据采集和时空分辨率。每个像素异步捕捉场景中超过用户定义的特定阈值的强度变化,并捕捉事件流。然而,这些传感器的显著特点意味着传统的计算机视觉方法无法直接应用,因此在实际应用之前必须研究新的方法。这项工作旨在填补现有文献空白,围绕不同应用领域进行调查和讨论,区分计算机视觉问题以及解决方案是否更适合或已应用于特定领域。此外,广泛的讨论还强调了每个应用领域的主要成就和挑战,以及各自的特点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Application-Driven Survey on Event-Based Neuromorphic Computer Vision
Traditional frame-based cameras, despite their effectiveness and usage in computer vision, exhibit limitations such as high latency, low dynamic range, high power consumption, and motion blur. For two decades, researchers have explored neuromorphic cameras, which operate differently from traditional frame-based types, mimicking biological vision systems for enhanced data acquisition and spatio-temporal resolution. Each pixel asynchronously captures intensity changes in the scene above certain user-defined thresholds, and streams of events are captured. However, the distinct characteristics of these sensors mean that traditional computer vision methods are not directly applicable, necessitating the investigation of new approaches before being applied in real applications. This work aims to fill existing gaps in the literature by providing a survey and a discussion centered on the different application domains, differentiating between computer vision problems and whether solutions are better suited for or have been applied to a specific field. Moreover, an extensive discussion highlights the major achievements and challenges, in addition to the unique characteristics, of each application field.
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