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Online Dynamic Hand Gesture Recognition Including Efficiency Analysis

机译:在线动态手势识别包括效率分析

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摘要

Online dynamic hand gesture recognition is challenging mainly due to three reasons: (i) There is no indication when a gesture starts and ends in the video, (ii) performed gestures should only be recognized once, and (iii) the entire architecture should be designed considering the memory and power budget. In this paper, a two-level hierarchical structure consisting of a detector and a classifier is proposed which enables offline-working convolutional neural network (CNN) architectures to operate online efficiently by using sliding window approach. For efficiency analysis, different CNN architectures are applied to compare these architectures over offline classification accuracy, number of parameters and computation complexity. In order to evaluate the single-time activations of the detected gestures, we used Levenshtein distance as an evaluation metric since it can measure misclassifications, multiple detections, and missing detections at the same time. The performance of the approach is evaluated on two public datasets - EgoGesture and NVIDIA Dynamic Hand Gesture Datasets - which require temporal detection and classification of the performed hand gestures. ResNeXt-101 model achieves the state-of-the-art offline classification accuracy of 94.03% on EgoGesture benchmark and competitive results on NVIDIA benchmarks. In online recognition, we obtain very good performances with considerable early detections.
机译:在线动态手势识别是挑战的主要原因是由于三个原因:(i)当手势在视频中开始并结束时,没有指示,(ii)只应识别一次,并且(iii)整个架构应该是考虑内存和电源预算设计。在本文中,提出了一种由检测器和分类器组成的两级层次结构,其能够通过使用滑动窗口方法在线运行下线工作的卷积神经网络(CNN)架构。为了效率分析,应用不同的CNN架构以通过离线分类准确性,参数数量和计算复杂度进行比较这些架构。为了评估检测到的手势的一次性激活,我们将Levenshtein距离用作评估度量,因为它可以同时测量错误分类,多次检测和缺失检测。该方法的性能是在两个公共数据集 - Egogesture和NVIDIA动态手势数据集上进行评估 - 这需要时间检测和进行所执行的手势的分类。 Resnext-101模型实现了最先进的离线分类精度为Egogesture基准和NVIDIA基准测试的竞争结果94.03%。在在线识别中,我们获得了非常好的性能,具有相当大的早期检测。

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