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A Framework for Robust Online Video Contrast Enhancement Using Modularity Optimization

机译:使用模块化优化的鲁棒在线视频对比度增强框架

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摘要

We address the problem of video contrast enhancement. Existing techniques either do not exploit temporal information at all or do not exploit it correctly. This results in inconsistency that causes undesirable flash and flickering artifacts. Our method analyzes video streams and cluster frames that are similar to each other. Our method does not have omniscient information about the entire video sequence. It is an online process with a fixed delay. A sliding window mechanism successfully detects shot boundaries “on-the-fly” in a video. A graph-based technique called “modularity” performs automatic clustering of video frames without a priori information about clusters. For every cluster in the video, we extract key frames belonging to each cluster using eigen analysis and estimate enhancement parameters for only the key frame, then use these parameters to enhance frames belonging to that cluster, thus making our method robust. We evaluate the clustering method on video sequences from the TRECVid 2001 dataset and compare it with existing methods. We show reduction of flash artifacts in enhanced videos. We show statistically significant improvement in perceived video quality and validate that by conducting experiments on human observers. We show application of our clustering process to perform robust video segmentation.
机译:我们解决了视频对比度增强的问题。现有技术要么根本不利用时间信息,要么不正确利用时间信息。这导致不一致,导致不希望的闪光和闪烁伪像。我们的方法分析彼此相似的视频流和群集帧。我们的方法没有关于整个视频序列的无所不知的信息。这是一个具有固定延迟的在线过程。滑动窗口机制可以成功“实时”检测视频中的镜头边界。一种基于图的技术称为“模块化”,它可以自动对视频帧进行聚类,而无需有关聚类的先验信息。对于视频中的每个群集,我们使用特征分析来提取属于每个群集的关键帧,并仅估计关键帧的增强参数,然后使用这些参数来增强属于该群集的帧,从而使我们的方法更加稳健。我们评估了来自TRECVid 2001数据集的视频序列的聚类方法,并将其与现有方法进行了比较。我们在增强型视频中显示了减少的闪光失真。我们在感知的视频质量上显示出统计学上的显着改善,并通过对人类观察者进行实验来验证这一点。我们展示了我们的聚类过程在执行鲁棒视频分割中的应用。

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