Hybrid Frame-Event Solution for Vision-Based Grasp and Pose Detection of Objects

Kyra Wang, Sihan Yang, Deepesh Kumar, N. Thakor
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引用次数: 1

Abstract

A key challenge in object manipulation using prosthetic hands is grasp detection and pose estimation, especially in cluttered scenes. Vision-based robotic grasping solutions typically only use conventional frame-based video cameras with high spatiotemporal redundancy, which is unsuitable for mobile platforms like prostheses with low processing power. On the other hand, while event-based dynamic vision sensors (DVS) have low spatiotemporal redundancy, their low resolution results in poor object segmentation and detection performance. In this paper we outline a novel hybrid solution inspired by the two-streams hypothesis of the neural processing of vision, utilizing both a frame-based video camera and a DVS to counter the pitfalls of both systems. By using computationally efficient object detection methods on the frame-based camera to highlight regions-of-interest (ROIs) for the DVS, we are able to perform pose estimation by computing the smallest axis of DVS events generated in the ROI. The proposed approach allows us to rapidly determine the required wrist rotation and a suitable grasp type to pick up objects using a prosthetic hand. Results on a laptop show that our method matches the accuracy of a conventional solution that employs only a frame-based video camera, while achieving 77.29% faster inference speed.
基于视觉的物体抓取和姿态检测的帧-事件混合解决方案
用假手操纵物体的一个关键挑战是抓取检测和姿态估计,特别是在混乱的场景中。基于视觉的机器人抓取解决方案通常只使用传统的基于帧的视频摄像机,具有高时空冗余,不适合处理能力低的假体等移动平台。另一方面,基于事件的动态视觉传感器(DVS)具有较低的时空冗余,但其较低的分辨率导致目标分割和检测性能较差。在本文中,我们概述了一种新的混合解决方案,该解决方案受到视觉神经处理的双流假设的启发,利用基于帧的视频摄像机和分布式交换机来克服这两种系统的缺陷。通过在基于帧的相机上使用计算效率高的目标检测方法来突出DVS的感兴趣区域(ROI),我们能够通过计算ROI中生成的DVS事件的最小轴来执行姿态估计。所提出的方法使我们能够快速确定所需的手腕旋转和合适的抓取类型,以使用假手拾取物体。在笔记本电脑上的结果表明,我们的方法与仅使用基于帧的摄像机的传统解决方案的精度相当,同时实现了77.29%的快推理速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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