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Towards Event-Driven Object Detection with Off-the-Shelf Deep Learning

机译:借助现成的深度学习实现事件驱动的对象检测

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Event cameras are an emerging technology in computer vision, offering extremely low latency and bandwidth, as well as a high temporal resolution and dynamic range. Inherent data compression is achieved as pixel data is only produced by contrast changes at the edges of moving objects. However, current trends in state-of-the-art visual algorithms rely on deep-learning with networks designed to process colour and intensity information contained in dense arrays, but are notoriously computationally heavy. While the combination of these visual technologies could lead to fast, efficient, and accurate detection and recognition algorithms, it is uncertain whether the compressed event-camera data actually contain the required information for these techniques to discriminate between objects and a cluttered background. This paper presents a pilot study in which off-the-shelf deep-learning is applied to visual events for object detection on the iCub robotic platform, and analyses the impact of temporal integration of the event data. We also present a novel pipeline that bootstraps event-based dataset annotation from mature frame-based algorithms, in order to more quickly generate the required datasets.
机译:事件相机是计算机视觉中的新兴技术,具有极低的延迟和带宽,以及高的时间分辨率和动态范围。由于像素数据仅通过移动物体边缘的对比度变化产生,因此可以实现固有的数据压缩。但是,当前最先进的视觉算法趋势依赖于深度学习网络,该网络旨在处理密集阵列中包含的颜色和强度信息,但是众所周知,它的计算量很大。这些视觉技术的结合可以导致快速,高效,准确的检测和识别算法,但不确定压缩后的事件相机数据是否实际上包含这些技术所需的信息,以区分对象和混乱的背景。本文提供了一项初步研究,其中将现成的深度学习应用于视觉事件以在iCub机器人平台上进行对象检测,并分析事件数据的时间整合的影响。我们还提出了一种新颖的管道,该管道从成熟的基于框架的算法中引导基于事件的数据集注释,以便更快地生成所需的数据集。

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