Comprehensive understanding of key players and actions in multiplayer sports broadcast videos is a challenging problem. Unlike in news or finance videos, sports videos have limited text. While both action recognition for multiplayer sports and detection of players has seen robust research, understanding contextual text in video frames still remains one of the most impactful avenues of sports video understanding. In this work we study extremely accurate semantic text detection and recognition in sports clocks, and challenges therein. We observe unique properties of sports clocks, which makes it hard to utilize general-purpose pre-trained detectors and recognizers, so that text can be accurately understood to the degree of being used to align to external knowledge. We propose a novel distant supervision technique to automatically build sports clock datasets. Along with suitable data augmentations, combined with any state-of-the-art text detection and recognition model architectures, we extract extremely accurate semantic text. Finally, we share our computational architecture pipeline to scale this system in industrial setting and proposed a robust dataset for the same to validate our results.
翻译:与新闻或金融视频不同,体育视频的文本有限。虽然对多玩者体育的承认和对球员的探测都看到了强有力的研究,但视频框架中的背景文本的理解仍然是体育视频理解的最有影响力的途径之一。在这项工作中,我们研究了体育钟中极准确的语义文字探测和识别以及其中的挑战。我们观察到体育钟的独特特性,这使得很难使用通用的预先训练的探测器和识别器,从而能够准确理解文字与外部知识的匹配程度。我们提出了一种新型的远程监督技术,以自动建立体育钟数据集。除了适当的数据增强,加上任何最先进的文本探测和识别模型架构外,我们还提取了非常准确的语义文字。最后,我们分享了我们的计算结构管道,以在工业环境中扩大这个系统的规模,并提出了一个可靠的数据集,以验证我们的成果。