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Biomechanical-Based Approach to Data Augmentation for One-Shot Gesture Recognition

机译:基于生物力学的一键手势识别数据增强方法

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Most common approaches to one-shot gesture recognition have leveraged mainly conventional machine learning solutions and image based data augmentation techniques, ignoring the mechanisms that are used by humans to perceive and execute gestures, a key contextual component in this process. The novelty of this work consists on modeling the process that leads to the creation of gestures, rather than observing the gesture alone. In this approach, the context considered involves the way in which humans produce the gestures - the kinematic and biomechanical characteristics associated with gesture production and execution. By understanding the main "modes" of variation we can replicate the single observation many times. Consequently, the main strategy proposed in this paper includes generating a data set of human-like examples based on "naturalistic" features extracted from a single gesture sample while preserving fundamentally human characteristics like visual saliency, smooth transitions and economy of motion. The availability of a large data set of realistic samples allows the use state-of-the-art classifiers for further recognition. Several classifiers were trained and their recognition accuracies were assessed and compared to previous one-shot learning approaches. An average recognition accuracy of 95% among all classifiers highlights the relevance of keeping the human "in the loop" to effectively achieve one-shot gesture recognition.
机译:一键式手势识别的最常见方法主要利用了传统的机器学习解决方案和基于图像的数据增强技术,而忽略了人类用来感知和执行手势(此过程中的关键上下文组件)的机制。这项工作的新颖性在于对导致手势创建的过程进行建模,而不是仅观察手势。在这种方法中,所考虑的上下文涉及人类产生手势的方式-与手势产生和执行相关的运动学和生物力学特征。通过了解变化的主要“模式”,我们可以多次复制单个观测值。因此,本文提出的主要策略包括基于从单个手势样本中提取的“自然”特征生成类人示例的数据集,同时从根本上保留人的特征,如视觉显着性,平滑过渡和运动的经济性。大量实际样本的数据集的可用性允许使用最新的分类器进行进一步的识别。训练了几个分类器,评估了它们的识别准确度,并将其与以前的一次性学习方法进行了比较。在所有分类器中,平均识别准确率达到95%,突显了保持人类“处于循环中”以有效实现一次性手势识别的相关性。

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