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Feature extraction from 2D gesture trajectory in Malaysian Sign Language recognition

机译:马来西亚手语识别中2D手势轨迹的特征提取

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In this paper, a method to identify hand gesture trajectory in constrained environment is introduced. The method consists of three modules: collection of input images, skin segmentation and feature extraction. To reduce processing time, we compare the absolute difference between two consecutive frames then choose which frames have the highest value. YCbCr colour space is selected as the skin model because it behaves in such a way that the illumination component is concentrated in a single component (Y) while the blue and red chrominance component is in Cb and Cr. The hand gestures trajectory is to be recognized by using two methods: template matching and division by shape. Template matching required the removal of the head of the signer, leaving with just 2 hands only. For division of shape, the gesture are grouped into 5 classifications of hand postures that is vertical, horizontal, 45° above, 45° below and overlapping with hands. A total of 43 frames were selected manually for each hand posture and analyzed to obtain the variation of hand gesture feature such as width, heights, angle and distance. Our experimental results show up to 80% of accuracy in identifying the forms of the gesture trajectory. It shows that the feature extraction method proposed in this paper is appropriate for defining particular gesture trajectory.
机译:本文介绍了一种在受限环境下识别手势轨迹的方法。该方法包括三个模块:输入图像的收集,皮肤分割和特征提取。为了减少处理时间,我们比较了两个连续帧之间的绝对差,然后选择具有最高值的帧。选择YCbCr颜色空间作为皮肤模型是因为它的行为方式是,照明分量集中在单个分量(Y)中,而蓝色和红色色度分量在Cb和Cr中。手势轨迹应通过两种方法识别:模板匹配和按形状划分。模板匹配要求移除签名者的头部,只剩下两只手。为了进行形状划分,将手势分为垂直,水平,上方45°,下方45°并与手重叠的5种手势姿势。手动为每种手势选择了总共43帧,并对其进行分析以获得手势特征的变化,例如宽度,高度,角度和距离。我们的实验结果表明,识别手势轨迹的形式的准确性高达80%。结果表明,本文提出的特征提取方法适用于定义特定的手势轨迹。

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