Artifact Detection Maps Learned using Shallow Convolutional Networks

T. Goodall, A. Bovik
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Abstract

Automatically identifying the locations and severities of video artifacts is a difficult problem. We have developed a general method for detecting local artifacts by learning differences between distorted and pristine video frames. Our model, which we call the Video Impairment Mapper (VID-MAP), produces a full resolution map of artifact detection probabilities based on comparisons of exitatory and inhibatory convolutional responses. Validation on a large database shows that our method outperforms the previous state-of-the-art. A software release of VID-MAP that was trained to produce upscaling and combing detection probability maps is available online: http://live.ece.utexas.edu/research/quality/VIDMAP release.zip for public use and evaluation.
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使用浅卷积网络学习的伪影检测地图
自动识别视频伪影的位置和严重程度是一个难题。我们开发了一种通过学习扭曲和原始视频帧之间的差异来检测局部伪影的通用方法。我们的模型,我们称之为视频损伤映射器(VID-MAP),基于兴奋性和抑制性卷积响应的比较,生成伪信号检测概率的全分辨率地图。在大型数据库上的验证表明,我们的方法优于以前的最先进的方法。VID-MAP的软件版本经过培训,可以制作升级和梳理检测概率图:http://live.ece.utexas.edu/research/quality/VIDMAP release.zip,供公众使用和评估。
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