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Real-time Hand Gesture Detection and Classification Using Convolutional Neural Networks

机译:卷积神经网络的实时手势检测与分类

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Real-time recognition of dynamic hand gestures from video streams is a challenging task since (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 work, we address these challenges by proposing a hierarchical structure enabling offline-working convolutional neural network (CNN) architectures to operate online efficiently by using sliding window approach. The proposed architecture consists of two models: (1) A detector which is a lightweight CNN architecture to detect gestures and (2) a classifier which is a deep CNN to classify the detected gestures. In order to evaluate the single-time activations of the detected gestures, we propose to use Levenshtein distance as an evaluation metric since it can measure misclassifications, multiple detections, and missing detections at the same time. We evaluate our architecture on two publicly available datasets - EgoGesture and NVIDIA Dynamic Hand Gesture Datasets - which require temporal detection and classification of the performed hand gestures. ResNeXt-101 model, which is used as a classifier, achieves the state-of-the-art offline classification accuracy of 94.04% and 83.82% for depth modality on EgoGesture and NVIDIA benchmarks, respectively. In real-time detection and classification, we obtain considerable early detections while achieving performances close to offline operation. The codes and pretrained models used in this work are publicly available
机译:从视频流中实时识别动态手势是一项艰巨的任务,因为(i)没有迹象表明手势在视频中的开始和结束时间;(ii)执行的手势仅应被识别一次;(iii)整个手势设计架构时应考虑内存和功耗预算。在这项工作中,我们通过提出一种分层结构来解决这些挑战,该分层结构使离线工作卷积神经网络(CNN)体系结构能够通过使用滑动窗口方法有效地在线运行。所提出的体系结构包括两个模型:(1)检测器,它是一种轻巧的CNN体​​系结构,用于检测手势;(2)分类器,是一种深层CNN,用于对检测到的手势进行分类。为了评估检测到的手势的一次性激活,我们建议使用Levenshtein距离作为评估指标,因为它可以同时测量错误分类,多次检测和丢失检测。我们在两个公开可用的数据集-EgoGesture和NVIDIA Dynamic Hand Gesture数据集-上评估我们的体系结构,这需要对执行的手势进行时间检测和分类。 ResNeXt-101模型用作分类器,在EgoGesture和NVIDIA基准测试中,深度模式的最新离线分类准确率分别为94.04%和83.82%。在实时检测和分类中,我们获得了大量的早期检测,同时获得了接近脱机操作的性能。这项工作中使用的代码和预训练模型是公开可用的

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