EdgeDuet:边缘辅助自主移动视觉的平铺小目标检测

Xu Wang, Zheng Yang, Jiahang Wu, Yi Zhao, Zimu Zhou
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引用次数: 30

摘要

在资源受限的设备上进行精确、实时的物体检测,可以实现自主移动视觉应用,如交通监控、态势感知和安全检查,在这些应用中,在拥挤的场景中检测大小物体至关重要。先前的研究要么在本地执行对象检测,要么将任务卸载到边缘/云。局部对象检测在小对象上的精度较低,因为它在低分辨率视频上运行以适应移动存储器。卸载对象检测由于将高分辨率视频上传到边缘/云而导致高延迟。我们建议在局部检测大物体的同时将小物体的检测转移到边缘,而不是单纯的局部处理或卸载。关键的挑战是如何减少小目标检测的延迟。因此,我们开发了EdgeDuet,这是第一个边缘设备协作框架,用于增强具有瓷砖级并行性的小目标检测。它以块为单位优化了卸载的检测管道,而不是整个帧,以实现高精度和低延迟。在LTE、WiFi 2.4GHz、WiFi 5GHz下对无人机视觉数据集的评估表明,EdgeDuet在小目标检测精度上优于局部目标检测233.0%。与最先进的卸载方案相比,它还将检测精度提高了44.7%,延迟提高了34.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EdgeDuet: Tiling Small Object Detection for Edge Assisted Autonomous Mobile Vision
Accurate, real-time object detection on resource-constrained devices enables autonomous mobile vision applications such as traffic surveillance, situational awareness, and safety inspection, where it is crucial to detect both small and large objects in crowded scenes. Prior studies either perform object detection locally on-board or offload the task to the edge/cloud. Local object detection yields low accuracy on small objects since it operates on low-resolution videos to fit in mobile memory. Offloaded object detection incurs high latency due to uploading high-resolution videos to the edge/cloud. Rather than either pure local processing or offloading, we propose to detect large objects locally while offloading small object detection to the edge. The key challenge is to reduce the latency of small object detection. Accordingly, we develop EdgeDuet, the first edge-device collaborative framework for enhancing small object detection with tile-level parallelism. It optimizes the offloaded detection pipeline in tiles rather than the entire frame for high accuracy and low latency. Evaluations on drone vision datasets under LTE, WiFi 2.4GHz, WiFi 5GHz show that EdgeDuet outperforms local object detection in small object detection accuracy by 233.0%. It also improves the detection accuracy by 44.7% and latency by 34.2% over the state-of-the-art offloading schemes.
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