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Real Time Compressive Sensing Video Reconstruction in Hardware

机译:硬件中的实时压缩传感视频重构

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Compressive sensing has allowed for reconstruction of missing pixels in incomplete images with higher accuracy than was previously possible. Moreover, video data or sequences of images contain even more correlation, leading to a much sparser representation as demonstrated repeatedly in numerous digital video formats and international standards. Compressive sensing has inspired the design of a number of imagers which take advantage of the need to only subsample a scene, which reduces power consumption by requiring acquisition and transmission of fewer samples. In this paper, we show how missing pixels in a video sequence can be estimated using compressive sensing techniques. We present a real time implementation of our algorithm and show its application to an asynchronous time-based image sensor (ATIS) from the Austrian Institute of Technology. The ATIS only provides pixel intensity data when and where a change in pixel intensity is detected, however, noise randomly causes intensity changes to be falsely detected, thereby providing random samples of static regions of the scene. Unlike other compressive sensing imagers, which typically have pseudo-random sampling designed in at extra effort, the ATIS used here provides random samples as a side effect of circuit noise. Here, we describe and analyze a field-programmable gate array implementation of a matching pursuit (MP) algorithm for compressive sensing reconstruction capable of reconstructing over 1.9 million 8$,times,$ 8 pixel regions per second with a sparsity of 11 using a basis dictionary containing 64 elements. In our application to ATIS we achieve throughput of 28 frames per second at a resolution of 304 $,times,$240 pixels with reconstruction accuracy comparable to that of state of the art algorithms evaluated offline.
机译:压缩感测允许以比以前可能的精度更高的精度重建不完整图像中的丢失像素。此外,视频数据或图像序列甚至包含更多的相关性,从而导致稀疏表示,这在众多数字视频格式和国际标准中反复得到了证明。压缩感测启发了许多成像器的设计,这些成像器利用了仅对场景进行子采样的需求,从而通过要求采集和传输更少的采样来降低功耗。在本文中,我们展示了如何使用压缩感测技术来估计视频序列中的丢失像素。我们介绍了算法的实时实现,并展示了其在奥地利技术学院的基于异步时间的图像传感器(ATIS)中的应用。 ATIS仅在检测到像素强度变化的时间和位置提供像素强度数据,但是,噪声随机导致错误地检测到强度变化,从而提供了场景静态区域的随机样本。与通常具有额外设计的伪随机采样的其他压缩感测成像器不同,此处使用的ATIS提供随机采样作为电路噪声的副作用。在这里,我们描述并分析了用于压缩感测重建的匹配追踪(MP)算法的现场可编程门阵列实现,该算法能够以每秒11个稀疏度重建190万个8×8个像素区域包含64个元素的字典。在我们对ATIS的应用中,我们实现了每秒28帧的吞吐量,分辨率为$ 304 x 240像素,其重构精度可与离线评估的最新算法相媲美。

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