High dynamic range (HDR) video processing for the exploitation of high bit-depth sensors in human-monitored surveillance

D. Natale, Matthew S. Baran, R. Tutwiler
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引用次数: 2

Abstract

High bit-depth video data is becoming more common in imaging and remote sensing because higher bit-depth cameras are becoming more affordable. Displays often represent images in lower bit-depths, and human vision is not able to completely exploit this additional information in its native form. These problems are addressed with High Dynamic Range (HDR) tone mapping, which nonlinearly maps lightness levels from a high bit-depth image into a lower bit-depth representation in a way that attempts to retain and accentuate the maximum amount of useful information therein. We have adapted the well-known Contrast Limited Adaptive Histogram Equalization (CLAHE) algorithm into the application of HDR video tone mapping by using time-adaptive local histogram transformations. In addition to lightness contrast, we use the transformations in the L*a*b* color space to amplify color contrast in the video stream. The transformed HDR video data maintains important details in local contrast while maintaining relative lightness levels locally through time. Our results show that time-adapted HDR tone mapping methods can be used in real-time video processing to store and display HDR data in low bit-depth formats with less loss of useful information compared to simple truncation.
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高动态范围(HDR)视频处理技术是高位深传感器在人类监控中的应用
高位深视频数据在成像和遥感中变得越来越普遍,因为更高位深的相机变得越来越便宜。显示器通常以较低的位深度表示图像,人类视觉无法完全利用其原始形式的附加信息。这些问题可以通过高动态范围(HDR)色调映射来解决,该映射将亮度级别从高位深度图像非线性地映射到较低位深度表示,以一种试图保留和强调其中最大量有用信息的方式。我们通过使用时间自适应局部直方图变换,将著名的对比度有限自适应直方图均衡化(CLAHE)算法应用于HDR视频色调映射。除了亮度对比外,我们还使用L*a*b*色彩空间中的变换来放大视频流中的色彩对比。转换后的HDR视频数据在保持局部对比度的同时保持局部相对亮度水平。我们的研究结果表明,与简单的截断相比,时间适应HDR色调映射方法可以用于实时视频处理,以低位深格式存储和显示HDR数据,减少有用信息的损失。
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