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Finding Recurrent Patterns from Continuous Sign Language Sentences for Automated Extraction of Signs

机译:从连续手语句子中找到递归模式以自动提取手语

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We present a probabilistic framework to automatically learn models of recurring signs from multiple sign language video sequences containing the vocabulary of interest. We extract the parts of the signs that are present in most occurrences of the sign in context and are robust to the variations produced by adjacent signs. Each sentence video is first transformed into a multidimensional time series representation, capturing the motion and shape aspects of the sign. Skin color blobs are extracted from frames of color video sequences, and a probabilistic relational distribution is formed for each frame using the contour and edge pixels from the skin blobs. Each sentence is represented as a trajectory in a low dimensional space called the space of relational distributions. Given these time series trajectories, we extract signemes from multiple sentences concurrently using iterated conditional modes (ICM). We show results by learning single signs from a collection of sentences with one common pervading sign, multiple signs from a collection of sentences with more than one common sign, and single signs from a mixed collection of sentences. The extracted signemes demonstrate that our approach is robust to some extent to the variations produced within a sign due to different contexts. We also show results whereby these learned sign models are used for spotting signs in test sequences. color="gray">
机译:我们提出了一个概率框架,可以从包含感兴趣词汇的多个手语视频序列中自动学习重复性手势的模型。我们提取在上下文中大多数出现的符号部分,这些符号对相邻符号产生的变化具有鲁棒性。首先将每个句子视频转换为多维时间序列表示,以捕获符号的运动和形状方面。从彩色视频序列的帧中提取肤色斑点,并使用来自肤色斑点的轮廓和边缘像素为每个帧形成概率关系分布。每个句子都表示为称为关系分布空间的低维空间中的轨迹。给定这些时间序列轨迹,我们使用迭代条件模式(ICM)同时从多个句子中提取符号。我们通过从具有一个常见渗透符号的句子集合中学习单个符号,从具有多个常见符号的句子集合中学习多个符号,以及从混合句子集合中学习单个符号来显示结果。提取的符号表明,我们的方法在某种程度上对由于上下文不同而在符号内产生的变化是鲁棒的。我们还将显示结果,这些学习的符号模型用于在测试序列中发现符号。 color =“ gray”>

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