Model Predictive Compression for Drone Video Analytics

Aakanksha Chowdhery, M. Chiang
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引用次数: 10

Abstract

Drones will be increasingly deployed in surveillance scenarios, disaster zones, and remote areas. The videos collected from drone cameras provide site surveys, summaries, detect and track multiple targets. Today such videos are processed offline after the drone flight. Real- time processing provides several opportunities but has two key challenges - network bandwidth on the drone-to-server link is constrained and the computational capability of the drone processor is limited in terms of applying machine vision in real time. We propose a model predictive compression algorithm that uses predicted drone trajectory to select and transmit the most important image frames to the ground station to maximize the application utility while minimizing the network bandwidth use. The proposed compression scheme works in real-time on the drone processor because it estimates background motion without computing image features. To correct the model inaccuracies, the drone receives feedback from the ground station that can compute image features in real time. Evaluation results suggest that the proposed compression approach reduces network bandwidth overheads by 50-72 % while ensuring high-quality mosaics in the drone mosaicing application.
无人机视频分析的模型预测压缩
无人机将越来越多地部署在监视场景、灾区和偏远地区。从无人机摄像机收集的视频提供了现场调查、总结、探测和跟踪多个目标。如今,此类视频在无人机飞行后进行离线处理。实时处理提供了许多机会,但也面临两个关键挑战:无人机到服务器链路上的网络带宽受到限制,无人机处理器的计算能力在实时应用机器视觉方面受到限制。我们提出了一种模型预测压缩算法,该算法使用预测的无人机轨迹来选择和传输最重要的图像帧到地面站,以最大限度地提高应用效用,同时最小化网络带宽使用。由于该压缩方案在不计算图像特征的情况下估计背景运动,因此可以在无人机处理器上实时工作。为了纠正模型的不准确性,无人机从地面站接收反馈,可以实时计算图像特征。评估结果表明,所提出的压缩方法减少了50- 72%的网络带宽开销,同时确保了无人机拼接应用中的高质量拼接。
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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