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CNN-based method for blotches and scratches detection in archived videos

机译:基于CNN的斑点方法和存档视频中的划痕检测

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摘要

In this work, we present a fully connected convolutional encoder-decoder for defects detection in archived video. The proposed method handles the detection of two of the most common archived video-related defects, namely blotches and scratches. It consists of two stages: (1) pixel-level classification and description of each video frame into defects pixels or not, by means of a novel CNN-based encoder-decoder architecture, and (2) spatio-temporal analysis to group and fine-tune the detections. For blotch detection, the learned features, extracted from an intermediate stage of the network, are used to evaluate the dissimilarity between the pre-selected regions in consecutive frames. For scratches detection, the morphology of scratches is used to eliminate false alarms. The experiments are performed on various video sequences suffering synthetic and real scratches and blotches. The results demonstrate the effectiveness of our approach and significant improvement against the most recent detectors. (C) 2019 Elsevier Inc. All rights reserved.
机译:在这项工作中,我们为存档视频中的缺陷检测提供了一个完全连接的卷积编码器解码器。该方法处理检测两个最常见的归档视频相关缺陷,即斑点和划痕。它由两个阶段组成:(1)通过新颖的基于CNN的编码器 - 解码器架构,并且(2)三个基于CNN的编码器解码器架构,每个视频帧的像素级别分类和每个视频帧的描述缺陷像素,以及(2)分析到组和罚款 - 检测。对于斑点检测,从网络的中间阶段提取的学习特征用于评估连续帧中预选区域之间的异化性。对于划痕检测,划痕的形态用于消除误报。对患有合成和真实划痕和斑点的各种视频序列进行实验。结果证明了我们方法的有效性和对最近探测器的显着改善。 (c)2019 Elsevier Inc.保留所有权利。

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