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Unsupervised Discovery of Fingerspelled Letters in Sign Language Videos

机译:手指在手语视频中无人监督的传单

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Automatic discovery and indexing in sign language videos would provide many valuable services such as search and retrieval in deaf social and news media which consists of sign language videos often with no associated texts available. As some of the context words in sign language conversations are fingerspelled, the discovery of fingerspelled letters plays a significant role. In this study, k-means clustering and Gaussian Mixture Model methods are used for the unsupervised discovery of fingerspelled letters. The clusers which mostly contain hand shapes corresponding to transitions between letters are eliminated based on their distortion level and Bayes information criterion values. The performance of the clustering methods are evaluated with the help of Adjusted Mutual Information metric. According to the results obtained with this metric, using a Gaussian Mixture Model for clustering yields better results than k-means clustering.
机译:手语视频中的自动发现和索引将提供许多有价值的服务,例如聋人社交和新闻媒体中的搜索和检索,这些媒体通常由不可用的手语视频组成。 随着手语对话中的一些上下文词语是手指的,手指的字母的发现发挥着重要作用。 在本研究中,K-Means聚类和高斯混合模型方法用于无监督的手指字母的发现。 基于其失真级别和贝叶斯信息标准值,消除了主要包含与字母之间的转换相对应的手形状的夹钳。 在调整后的相互信息度量的帮助下评估聚类方法的性能。 根据使用该度量获得的结果,使用高斯混合模型用于聚类产生的结果比K-Means聚类更好。

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