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Weakly-supervised TV logo detection

机译:弱监督电视徽标检测

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摘要

In this paper, a TV logo detection system is proposed based on the deep learning architecture for the specific TV logo detection task. Training a robust object detector typically requires a large amount of manually annotated data, which is time-consuming. To reduce the cost, we construct a TV logo detection system in a weakly-supervised framework, which is accomplished by a TV logo localization network based on Region Proposal Network (RPN) and a classification network based on Fast RCNN. Based on observed priors of a typical TV logo in pictures and video frames, data preparation and processing are performed by carrying out keyframe extraction and data augmentation. Since we build the localization network based on RPN, only a few bounding box annotations are employed for training the localization network. Then the well-trained localization network can produce numerous positive and negative proposals. These proposals along with the logo class labels for classification network training are exploited to train the classification network. To generate reasonable anchor boxes, k-means clustering is utilized to infer the scales and aspect ratios. Besides, for efficient training and better generalization ability, hard example mining is also explored. Experimental results demonstrate that the proposed weakly-supervised TV logo detection system achieves superior performances compared to the baseline Faster RCNN approach, with a mAP as about 92% in our newly proposed dataset.
机译:本文基于特定电视徽标检测任务的深度学习架构提出了一种电视徽标检测系统。训练强大的物体检测器通常需要大量的手动注释数据,这是耗时的。为了降低成本,我们在弱监督框架中构建电视徽标检测系统,该框架由基于区域提议网络(RPN)的电视徽标定位网络和基于快速RCNN的分类网络完成。基于图像和视频帧中的典型电视徽标的观察到的前沿,通过执行关键帧提取和数据增强来执行数据准备和处理。由于我们基于RPN构建本地化网络,因此仅采用几个边界盒注释来培训本地化网络。然后训练有素的本地化网络可以产生众多正面和否定的建议。利用这些提案以及用于分类网络培训的徽标类标签来培训分类网络。为了生成合理的锚盒,K-Means聚类用于推断尺度和纵横比。此外,对于有效的培训和更好的泛化能力,还探讨了硬示例挖掘。实验结果表明,与基线更快的RCNN方法相比,拟议的弱监督电视标识检测系统实现了卓越的性能,在我们的新建议数据集中的地图约为92 %。

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