Dictionary learning-based distributed compressive video sensing

Hung-Wei Chen, Li-Wei Kang, Chun-Shien Lu
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引用次数: 49

Abstract

We address an important issue of fully low-cost and low-complex video compression for use in resource-extremely limited sensors/devices. Conventional motion estimation-based video compression or distributed video coding (DVC) techniques all rely on the high-cost mechanism, namely, sensing/sampling and compression are disjointedly performed, resulting in unnecessary consumption of resources. That is, most acquired raw video data will be discarded in the (possibly) complex compression stage. In this paper, we propose a dictionary learning-based distributed compressive video sensing (DCVS) framework to “directly” acquire compressed video data. Embedded in the compressive sensing (CS)-based single-pixel camera architecture, DCVS can compressively sense each video frame in a distributed manner. At DCVS decoder, video reconstruction can be formulated as an l1-minimization problem via solving the sparse coefficients with respect to some basis functions. We investigate adaptive dictionary/basis learning for each frame based on the training samples extracted from previous reconstructed neighboring frames and argue that much better basis can be obtained to represent the frame, compared to fixed basis-based representation and recent popular “CS-based DVC” approaches without relying on dictionary learning.
基于字典学习的分布式压缩视频感知
我们解决了一个重要的问题,即在资源极其有限的传感器/设备中使用完全低成本和低复杂性的视频压缩。传统的基于运动估计的视频压缩或分布式视频编码(DVC)技术都依赖于高成本机制,即传感/采样和压缩分离进行,导致不必要的资源消耗。也就是说,在(可能)复杂的压缩阶段,大部分采集到的原始视频数据将被丢弃。在本文中,我们提出了一个基于字典学习的分布式压缩视频感知(DCVS)框架来“直接”获取压缩视频数据。DCVS嵌入到基于压缩感知(CS)的单像素摄像机架构中,可以以分布式的方式压缩感知每个视频帧。在DCVS解码器中,视频重构可以通过求解关于一些基函数的稀疏系数来表示为一个l1最小化问题。我们研究了基于从先前重建的相邻帧中提取的训练样本的每帧的自适应字典/基学习,并认为与基于固定基的表示和最近流行的不依赖字典学习的“基于cs的DVC”方法相比,可以获得更好的基来表示帧。
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