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Gesture Recognition using Hidden Markov Models from Fragmented Observations

机译:使用隐马尔可夫模型从分散的观测中的手势识别

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We consider the problem of computing the likelihood of a gesture from regular, unaided video sequences, without relying on perfect segmentation of the scene. Instead of requiring that low-and mid-level processes produce near-perfect segmentation of relevant body parts such as hands, we take into account that such processes can only produce uncertain information. The hands can only be detected as fragmented regions along with clutter. To address this problem, we propose an extension of the HMM formalism, which we call the frag-HMM, to allow for reasoning based on fragmented observations, via the use of an intermediate grouping process. In this formulation, we do not match the frag-HMMto one observation sequence, but rather to a sequence of observation sets, where each observation set is a collection of groups of fragmented observations. Based on the developed model, we show how to perform three kinds of computations. The first one is to decide on the best observation group for each frame, given a sequence of observation groups for the past frames. This allows us to incrementally compute the best segmentation of the hand for each frame, given the model. The second one involves the computation of likelihood of a sequence, averaged over all possible states sequences and possible groupings. The third is the computation of the likelihood of a sequence, maximized over all possible state sequences and group sequences. This can give us the best possible groupings for each frame, as well. We demonstrate our ideas using a publicly available hand gesture dataset that spans different subjects, is against complex background, and involves hand occlusions. The recognition performance is within 2% of that obtained with manually segmented hands and about 10% better than that obtained with segmentations that use the prior knowledge of the hand color.
机译:我们考虑计算从常规,无型视频序列的手势的可能性的问题,而不依赖于场景的完美分割。而不是要求低和中级流程产生近乎完美的相关身体部位的分割,如手,我们考虑到这些过程只能产生不确定的信息。只能与杂波一起检测到碎片区域的手。为了解决这个问题,我们提出了我们称之为Frag-HMM的HMM形式主义的延伸,以便通过使用中间分组过程来允许基于碎片观测的推理。在该制剂中,我们与一个观察序列不匹配,而是一系列观察组,其中每个观察组是分段观察组的集合。基于开发的模型,我们展示了如何执行三种计算。第一个是给定每帧的最佳观察组,给定过去框架的观察组序列。这允许我们逐步计算每个帧的手的最佳分割,给定模型。第二个涉及计算序列的可能性,对所有可能的状态序列和可能的分组进行平均。第三是在所有可能的状态序列和组序列中最大化序列的可能性的计算。这也可以为我们提供每个帧的最佳组合。我们使用跨越不同主题的公开手势数据集来展示我们的想法,这是针对复杂的背景,并涉及手闭塞。识别性能范围内的2%内与手动分割的手中获得,比使用现有技术的细分更好地获得的比例更好。

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