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Finger Gesture Spotting from Long Sequences Based on Multi-Stream Recurrent Neural Networks

机译:基于多流复发神经网络的长序列从手指手势斑点

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摘要

Gesture spotting is an essential task for recognizing finger gestures used to control in-car touchless interfaces. Automated methods to achieve this task require to detect video segments where gestures are observed, to discard natural behaviors of users' hands that may look as target gestures, and be able to work online. In this paper, we address these challenges with a recurrent neural architecture for online finger gesture spotting. We propose a multi-stream network merging hand and hand-location features, which help to discriminate target gestures from natural movements of the hand, since these may not happen in the same 3D spatial location. Our multi-stream recurrent neural network (RNN) recurrently learns semantic information, allowing to spot gestures online in long untrimmed video sequences. In order to validate our method, we collect a finger gesture dataset in an in-vehicle scenario of an autonomous car. 226 videos with more than 2100 continuous instances were captured with a depth sensor. On this dataset, our gesture spotting approach outperforms state-of-the-art methods with an improvement of about 10% and 15% of recall and precision, respectively. Furthermore, we demonstrated that by combining with an existing gesture classifier (a 3D Convolutional Neural Network), our proposal achieves better performance than previous hand gesture recognition methods.
机译:手势斑点是用于识别用于控制内部无触摸界面的手指手势的重要任务。实现此任务的自动化方法需要检测观察手势的视频段,以丢弃可能看起来像目标手势的用户手的自然行为,并且能够在线工作。在本文中,我们通过用于在线手指姿态的经常性神经结构解决这些挑战。我们提出了一个多流网络合并的手和手工特征,有助于区分手的自然运动,因为这些可能不会发生在相同的3D空间位置。我们的多流复发性神经网络(RNN)自发地学习语义信息,允许在长期无限的视频序列中在线点击手势。为了验证我们的方法,我们在自动驾车的车载情景中收集手指手势数据集。使用深度传感器捕获226个具有超过2100个连续实例的视频。在此数据集中,我们的手势发现方法优于最先进的方法,分别提高了约10%和15%的召回和精度。此外,我们证明,通过与现有的手势分类器(3D卷积神经网络)组合,我们的提议比先前的手势识别方法实现更好的性能。

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