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首页> 外文期刊>IEEE Signal Processing Magazine >Compressive Video Sensing: Algorithms, architectures, and applications
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Compressive Video Sensing: Algorithms, architectures, and applications

机译:压缩视频传感:算法,体系结构和应用

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摘要

The design of conventional sensors is based primarily on the Shannon?Nyquist sampling theorem, which states that a signal of bandwidth W Hz is fully determined by its discrete time samples provided the sampling rate exceeds 2 W samples per second. For discrete time signals, the Shannon?Nyquist theorem has a very simple interpretation: the number of data samples must be at least as large as the dimensionality of the signal being sampled and recovered. This important result enables signal processing in the discrete time domain without any loss of information. However, in an increasing number of applications, the Shannon-Nyquist sampling theorem dictates an unnecessary and often prohibitively high sampling rate (see "What Is the Nyquist Rate of a Video Signal?"). As a motivating example, the high resolution of the image sensor hardware in modern cameras reflects the large amount of data sensed to capture an image. A 10-megapixel camera, in effect, takes 10 million measurements of the scene. Yet, almost immediately after acquisition, redundancies in the image are exploited to compress the acquired data significantly, often at compression ratios of 100:1 for visualization and even higher for detection and classification tasks. This example suggests immense wastage in the overall design of conventional cameras.
机译:常规传感器的设计主要基于Shannon?Nyquist采样定理,该定理指出,带宽W Hz的信号完全由其离散时间采样确定,只要采样速率超过每秒2 W采样。对于离散时间信号,Shannon?Nyquist定理有一个非常简单的解释:数据采样的数量必须至少与被采样和恢复的信号的维数一样大。这一重要结果使离散时域中的信号处理成为可能,而不会丢失任何信息。但是,在越来越多的应用中,Shannon-Nyquist采样定理规定了不必要的且通常是高得惊人的采样率(请参阅“视频信号的奈奎斯特速率是多少?”)。例如,现代相机中图像传感器硬件的高分辨率反映了为捕捉图像而感测到的大量数据。实际上,一个10百万像素的相机可以对场景进行1000万次测量。然而,几乎在采集后立即利用图像中的冗余来显着压缩采集的数据,通常以100:1的压缩率进行可视化,甚至以更高的压缩率进行检测和分类。这个例子表明,传统相机的整体设计浪费巨大。

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