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Gesture Recognition in Ego-centric Videos Using Dense Trajectories and Hand Segmentation

机译:使用密集轨迹和手部分割的以自我为中心的视频中的手势识别

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We present a novel method for monocular hand gesture recognition in ego-vision scenarios that deals with static and dynamic gestures and can achieve high accuracy results using a few positive samples. Specifically, we use and extend the dense trajectories approach that has been successfully introduced for action recognition. Dense features are extracted around regions selected by a new hand segmentation technique that integrates superpixel classification, temporal and spatial coherence. We extensively testour gesture recognition and segmentation algorithms on public datasets and propose a new dataset shot with a wearable camera. In addition, we demonstrate that our solution can work in near real-time on a wearable device.
机译:我们提出了一种在自我视觉场景中用于单眼手势识别的新颖方法,该方法处理静态和动态手势,并可以使用一些正样本来获得高精度结果。具体来说,我们使用并扩展了已成功引入的用于动作识别的密集轨迹方法。通过整合了超像素分类,时间和空间连贯性的新手分割技术,可以在所选区域周围提取密集特征。我们在公共数据集上广泛测试了手势识别和分割算法,并提出了使用可穿戴式相机拍摄的新数据集。此外,我们证明了我们的解决方案可以在可穿戴设备上几乎实时地工作。

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