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Dynamic hand gesture recognition: An exemplar-based approach from motion divergence fields

机译:动态手势识别:基于运动散度场的基于示例的方法

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摘要

Exemplar-based approaches for dynamic hand gesture recognition usually require a large collection of gestures to achieve high-quality performance. Efficient visual representation of the motion patterns hence is very important to offer a scalable solution for gesture recognition when the databases are large. In this paper, we propose a new visual representation for hand motions based on the motion divergence fields, which can be normalized to gray-scale images. Salient regions such as Maximum Stable Extremal Regions (MSER) are then detected on the motion divergence maps. From each detected region, a local descriptor is extracted to capture local motion patterns. We further leverage indexing techniques from image search into gesture recognition. The extracted descriptors are indexed using a pre-trained vocabulary. A new gesture sample accordingly can be efficiently matched with database gestures through a term frequency-inverse document frequency (TF-IDF) weighting scheme. We have collected a hand gesture database with 10 categories and 1050 video samples for performance evaluation and further applications. The proposed method achieves higher recognition accuracy than other state-of-the-art motion and spatio-temporal features on this database. Besides, the average recognition time of our method for each gesture sequence is only 34.53 ms.
机译:用于动态手势识别的基于示例的方法通常需要大量手势才能实现高质量的性能。因此,当数据库很大时,运动模式的有效视觉表示对于为手势识别提供可伸缩的解决方案非常重要。在本文中,我们提出了一种基于运动散度场的手部运动的新视觉表示,可以将其标准化为灰度图像。然后在运动散度图上检测到诸如最大稳定极值区域(MSER)的显着区域。从每个检测到的区域中,提取局部描述符以捕获局部运动模式。我们进一步利用从图像搜索到手势识别的索引技术。使用预训练的词汇对提取的描述符进行索引。因此,新的手势样本可以通过词频-反文档频率(TF-IDF)加权方案与数据库手势有效地匹配。我们已经收集了包含10个类别和1050个视频样本的手势数据库,用于性能评估和进一步的应用。与该数据库上其他最新的运动和时空特征相比,所提出的方法具有更高的识别精度。此外,我们的方法对每个手势序列的平均识别时间仅为34.53 ms。

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