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Your Knock Is My Command: Binary Hand Gesture Recognition on Smartphone with Accelerometer

机译:你的敲门是我的命令:智能手机与加速度计的二进制手势识别

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Motion-based hand gesture is an important scheme to allow users to invoke commands on their smartphones in an eyes-free manner. However, the existing scheme is facing some problems. On the one hand, the expression ability of one single gesture is limited. As a result, a gesture set consisting of multiple gestures is typically adopted to represent different commands. Users must memorize all gestures in order to make interaction successfully. On the other hand, the design of gestures needs to be complicated to express diverse intensions. However, complex gestures are difficult to learn and remember. In addition, complex gestures set a high recognition barrier to smart APPs. This leads to an imbalance problem. Different gestures have different recognition accuracy levels, which may result in instability of recognition precision in practical applications. To address these problems, this paper proposes a novel scheme using binary motion gestures. Only two simple gestures are required to express bit “0” and “1,” and rich information can be expressed through the permutation and combination of the two binary gestures. Firstly, four kinds of candidate binary gestures are evaluated for eyes-free interactions. Then, an online signal cutting and merging algorithm is designed to split accelerometer signals sequence into multiple separate gesture signal segments. Next, five algorithms, including Dynamic Time Warping (DTW), Naive Bayes, Decision Tree, Support Vector Machine (SVM), and Bidirectional Long Short-Term Memory (BLSTM) Network, are adopted to recognize these segments of knock gestures. The BLSTM achieves the top performance in terms of both recognition accuracy and recognition imbalance. Finally, an Android application is developed to illustrate the usability of the proposed binary gestures. As binary gestures are much simpler than traditional hand gestures, they are more efficient and user-friendly. Our scheme eliminates the imbalance problem and achieves high recognition accuracy.
机译:基于运动的手势是一个重要的方案,允许用户以无需方式调用智能手机上的命令。但是,现有计划面临着一些问题。一方面,一个手势的表达能力有限。结果,通常采用由多个手势组成的手势集来表示不同的命令。用户必须记住所有手势,以便成功进行交互。另一方面,手势的设计需要复杂,以表达不同的强度。然而,复杂的手势难以学习和记住。此外,复杂的手势将高识别障碍设置为智能应用。这导致了不平衡的问题。不同的手势具有不同的识别精度水平,这可能导致实际应用中识别精度的不稳定性。为了解决这些问题,本文提出了一种使用二进制运动手势的新颖方案。仅表达两个简单的手势来表达位“0”和“1”,并且可以通过两个二进制手势的置换和组合来表达丰富的信息。首先,评估四种候选二元手势的无眼性相互作用。然后,在线信号切割和合并算法被设计为将加速度计信号序列分成多个单独的手势信号段。接下来,采用五种算法,包括动态时间翘曲(DTW),天真贝叶斯,决策树,支持向量机(SVM)和双向长期短期存储器(BLSTM)网络,以识别爆震手势的这些段。 BLSTM在识别准确性和识别不平衡方面实现了最佳性能。最后,开发了一个Android应用程序以说明所提出的二进制手势的可用性。由于二进制手势比传统手势更简单,它们更高效和用户友好。我们的计划消除了不平衡问题,实现了高识别准确性。

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