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CRNN Based Jersey-Bib Number/Text Recognition in Sports and Marathon Images

机译:基于CRNN的运动和马拉松图像中的Jersey-Bib号码/文本识别

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The primary challenge in tracing the participants in sports and marathon video or images is to detect and localize the jersey/Bib number that may present in different regions of their outfit captured in cluttered environment conditions. In this work, we proposed a new framework based on detecting the human body parts such that both Jersey Bib number and text is localized reliably. To achieve this, the proposed method first detects and localize the human in a given image using Single Shot Multibox Detector (SSD). In the next step, different human body parts namely, Torso, Left Thigh, Right Thigh, that generally contain a Bib number or text region is automatically extracted. These detected individual parts are processed individually to detect the Jersey Bib number/text using a deep CNN network based on the 2-channel architecture based on the novel adaptive weighting loss function. Finally, the detected text is cropped out and fed to a CNN-RNN based deep model abbreviated as CRNN for recognizing jersey/Bib/text. Extensive experiments are carried out on the four different datasets including both bench-marking dataset and a new dataset. The performance of the proposed method is compared with the state-of-the-art methods on all four datasets that indicates the improved performance of the proposed method on all four datasets.
机译:跟踪运动和马拉松视频或图像中参与者的主要挑战是检测并定位在混乱的环境条件下捕获的衣服不同区域中可能出现的球衣/围嘴编号。在这项工作中,我们提出了一个基于检测人体部位的新框架,以使Jersey Bib号码和文本都可以可靠地定位。为了实现这一目标,所提出的方法首先使用Single Shot Multibox Detector(SSD)在给定图像中检测并定位人类。在下一步中,将自动提取通常包含Bib数字或文本区域的人体不同部位,即躯干,左大腿,右大腿。使用基于新颖的自适应加权损失函数的2通道架构的深度CNN网络,对这些检测到的各个部分进行单独处理,以检测Jersey围嘴号码/文本。最后,将检测到的文本裁剪出来,并输入到基于CNN-RNN的深层模型(缩写为CRNN)中,以识别球衣/围裙/文本。在包括基准测试数据集和新数据集的四个不同数据集上进行了广泛的实验。将所提出的方法的性能与所有四个数据集上的最新方法进行了比较,这表明所提出的方法在所有四个数据集上的性能都有所提高。

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