Low Complexity Video Encoding and High Complexity Decoding for UAV Reconnaissance and Surveillance

Malavika Bhaskaranand, J. Gibson
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引用次数: 8

Abstract

Conventional video compression schemes such as H.264/AVC use a high complexity encoder with block motion estimation (ME) and a low complexity, low latency decoder. However, unmanned aerial vehicle (UAV) reconnaissance and surveillance applications require low complexity encoders but can accommodate high complexity decoders. Moreover, the video sequences in these applications often primarily have global motion due to the known movement of the UAV and camera mounts. Motivated by this scenario, we propose and investigate a low complexity encoder with global motion based frame prediction and no block ME. For fly-over videos, our encoder achieves more than a 40% bit rate savings over a H.264 encoder with ME block size restricted to 8 × 8 and at lower complexity. We also develop a high complexity decoder based on Kalman filtering along motion trajectories and show average PSNR improvements of up to 0.5 dB with respect to a classic low complexity decoder.
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面向无人机侦察监视的低复杂度视频编码和高复杂度解码
传统的视频压缩方案(如H.264/AVC)使用具有块运动估计(ME)的高复杂度编码器和低复杂度、低延迟的解码器。然而,无人机(UAV)侦察和监视应用需要低复杂度的编码器,但可以容纳高复杂度的解码器。此外,在这些应用中的视频序列通常主要具有全局运动,由于无人机和相机支架的已知运动。在这种情况下,我们提出并研究了一种基于全局运动的帧预测和无块ME的低复杂度编码器。对于飞越视频,我们的编码器实现了超过40%的比特率节省比H.264编码器与ME块大小限制为8 × 8和较低的复杂性。我们还开发了一种基于卡尔曼滤波沿运动轨迹的高复杂度解码器,与经典的低复杂度解码器相比,平均PSNR提高了0.5 dB。
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