体育视频中多个logo检测的相互增强

Yuan Liao, Xiaoqing Lu, Chengcui Zhang, Yongtao Wang, Zhi Tang
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引用次数: 27

摘要

检测体育视频中标识的出现频率和持续时间为赞助商提供了一种评估其广告效果的有效方法。然而,通用的目标检测方法并不能解决体育视频中的所有问题。在本文中,我们提出了一种相互增强的方法,可以通过从其他同时出现的徽标中获得的信息来提高对徽标的检测。在基于fast - rcnn的框架中,我们首先通过分析每帧中同质标识的特征,包括类型重复、颜色一致性和互斥性,引入了一种同质增强的重新排序方法。与传统的以优势提案提升弱提案的增强机制不同,我们的互增强方法也可以通过弱提案提升相对重要的提案。我们的帧传播机制中还包括相互增强,通过利用跨帧的徽标连续性来改进徽标检测。我们使用网球视频数据集和相关的徽标集合进行检测评估。实验表明,该方法优于现有方法,具有更高的精度。
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Mutual Enhancement for Detection of Multiple Logos in Sports Videos
Detecting logo frequency and duration in sports videos provides sponsors an effective way to evaluate their advertising efforts. However, general-purposed object detection methods cannot address all the challenges in sports videos. In this paper, we propose a mutual-enhanced approach that can improve the detection of a logo through the information obtained from other simultaneously occurred logos. In a Fast-RCNN-based framework, we first introduce a homogeneity-enhanced re-ranking method by analyzing the characteristics of homogeneous logos in each frame, including type repetition, color consistency, and mutual exclusion. Different from conventional enhance mechanism that improves the weak proposals with the dominant proposals, our mutual method can also enhance the relatively significant proposals with weak proposals. Mutual enhancement is also included in our frame propagation mechanism that improves logo detection by utilizing the continuity of logos across frames. We use a tennis video dataset and an associated logo collection for detection evaluation. Experiments show that the proposed method outperforms existing methods with a higher accuracy.
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