首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >USER INDEPENDENT GESTURE INTERACTION FOR SMALL HANDHELD DEVICES
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USER INDEPENDENT GESTURE INTERACTION FOR SMALL HANDHELD DEVICES

机译:小型手持设备的用户独立手势交互

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Accelerometer-based gesture recognition facilitates a complementary interaction modality for controlling mobile devices and home appliances. Using gestures for the task of home appliance control requires use of the same device and gestures by different persons, i.e. user independent gesture recognition. The practical application in small embedded low-resource devices also requires high computational performance. The user independent gesture recognition accuracy was evaluated with a set of eight gestures and seven users, with a total of 1120 gestures in the dataset. Twenty-state continuous HMM yielded an average of 96.9% user independent recognition accuracy, which was cross-validated by leaving one user in turn out of the training set. Continuous and discrete five-state HMM computational performances were compared with a reference test in a PC environment, indicating that discrete HMM is 20% faster. Computational performance of discrete five-state HMM was evaluated in an embedded hardware environment with a 104 MHz ARM-9 processor and Symbian OS. The average recognition time per gesture calculated from 1120 gesture repetitions was 8.3 ms. With this result, the computational performance difference between the compared methods is considered insignificant in terms of practical application. Continuous HMM is hence recommended as a preferred method due to its better suitability for a continuous-valued signal, and better recognition accuracy. The results suggest that, according to both evaluation criteria, HMM is feasible for practical user independent gesture control applications in mobile low-resource embedded environments.
机译:基于加速度计的手势识别有助于控制移动设备和家用电器的互补交互方式。将手势用于家用电器控制的任务需要不同的人使用相同的设备和手势,即用户独立的手势识别。在小型嵌入式低资源设备中的实际应用也需要很高的计算性能。通过八个手势和七个用户的集合评估了用户独立手势识别的准确性,数据集中共有1120个手势。二十状态连续HMM产生了平均96.9%的用户独立识别准确度,通过将一名用户转出训练集进行交叉验证。将连续和离散五态HMM的计算性能与PC环境中的参考测试进行了比较,表明离散HMM的速度提高了20%。在具有104 MHz ARM-9处理器和Symbian OS的嵌入式硬件环境中评估了离散五态HMM的计算性能。根据1120个手势重复计算得出的每个手势的平均识别时间为8.3 ms。结果,在实际应用中,比较方法之间的计算性能差异被认为是微不足道的。因此建议使用连续HMM作为首选方法,因为它对连续值信号的适应性更好,并且识别精度更高。结果表明,根据这两个评估标准,HMM对于移动低资源嵌入式环境中的实际用户独立手势控制应用程序是可行的。

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