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Improved GLOH Approach for One-Shot Learning Human Gesture Recognition

机译:改进的GLOH方法用于一键式学习手势识别

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A method is presented for One-Shot Learning Human Gesture Recognition. Shi-Tomasi corner detector and sparse optical flow are used to quickly detect and track robust key-points around motion patterns in scale space. Then Improved Gradient Location and Orientation Histogram feature descriptor is applied to capture the description of robust key interest point. All the extracted features from the training samples are clustered with the k-means algorithm to learn a visual codebook. Subsequently, simulation orthogonal matching pursuit is applied to achieve descriptor coding which map each feature into a certain visual codeword. K-NN classifier is used to recognizing the gesture. The proposed approach has been evaluated on ChaLeam gesture database.
机译:提出了一种用于单次学习人的手势识别的方法。 Shi-Tomasi拐角检测器和稀疏光流用于快速检测和跟踪刻度空间中运动模式周围的稳健关键点。然后,使用改进的梯度位置和方向直方图特征描述符来捕获对健壮关键兴趣点的描述。从训练样本中提取的所有特征均与k-means算法聚类,以学习可视密码本。随后,应用仿真正交匹配追踪来实现描述符编码,该描述符编码将每个特征映射到某个视觉代码字中。 K-NN分类器用于识别手势。所提出的方法已在ChaLeam手势数据库上进行了评估。

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