Social Video Advertisement Replacement and its Evaluation in Convolutional Neural Networks

Q4 Computer Science
Cheng Yang, Xiang Yu, Arun Kumar, G. Ali, P. H. Chong, P. P. Lam
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引用次数: 0

Abstract

This paper introduces a method to use deep convolutional neural networks (CNNs) to automatically replace advertisement (AD) photo on social (or self-media) videos and provides the suitable evaluation method to compare different CNNs. An AD photo can replace a picture inside a video. However, if a human being occludes the replaced picture in the original video, the newly pasted AD photo will block the human occluded part. The deep learning algorithm is implemented to segment the human being from the video. The segmented human pixels are then pasted back to the occluded area, so that the AD photo replacement becomes natural and perfect appearance in the video. This process requires the predicted occlusion edge to be closed to the ground truth occlusion edge, so that the AD photo can be occluded naturally. Therefore, this research introduces a curve fitting method to measure the predicted occlusion edge’s error. By using this method, three CNN methods are applied and compared for the AD replacement. They are mask of regions convolutional neural network (Mask RCNN), a recurrent network for video object segmentation (ROVS) and DeeplabV3. The experimental results show the comparative segmentation accuracy of the different models and DeeplabV3 shows the best performance.
基于卷积神经网络的社交视频广告替代及其评价
本文介绍了一种利用深度卷积神经网络(cnn)自动替换社交(或自媒体)视频中的广告(AD)照片的方法,并提供了比较不同cnn的合适评价方法。广告照片可以代替视频中的图片。但是,如果原始视频中有人遮挡了被替换的图片,则新粘贴的AD照片将遮挡被遮挡的部分。采用深度学习算法将人从视频中分离出来。然后将分割的人体像素粘贴回遮挡区域,使广告照片替换成为视频中自然完美的外观。这个过程要求预测的遮挡边缘与地面真实遮挡边缘接近,这样才能自然遮挡AD照片。因此,本研究引入了一种曲线拟合的方法来测量预测遮挡边缘的误差。利用该方法,对三种CNN方法进行了AD替换的比较。它们分别是区域掩模卷积神经网络(mask RCNN)、视频对象分割循环网络(ROVS)和DeeplabV3。实验结果表明,不同模型的分割精度比较,DeeplabV3表现出最好的分割效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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