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首页> 外文期刊>International Journal of Applied Engineering Research >Hand Gesture Identification using Preprocessing, Background Subtraction and Segmentation Techniques
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Hand Gesture Identification using Preprocessing, Background Subtraction and Segmentation Techniques

机译:使用预处理,背景扣除和分割技术进行手势识别

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摘要

Hand Gestures can be identified as the most natural way for Human Computer Interaction as they impersonate how humans interact with each other. In addition to HCI they are used in various applications such as remote control, robot control, human computer interaction, military application and sign language identification. Hand gesture identification is usually implemented in three phases-hand gesture segmentation, feature extraction and gesture classification. In this paper we have compared various filtering, background subtraction and edge detection techniques for the purpose of gesture segmentation. Initially the hand gestures are captured by the camera and those images are preprocessed using the Non Local Mean Filter (NLMF), Contra harmonic Mean Filter (CMF), Spatial Filter (SF) and Temporal Median Filter (TMF). These filter performances are compared using Signal to Noise Ratio and the Mean Absolute Error. The background is then subtracted using the Gaussian Mixture Model (GMM) and their results are compared with Adaptive Background Mixture Model (ABMM). Final edge detection is executed using the Improved Global Swarm Optimization based Canny Edge Detection (IGSOCED) and these results matched with that of Sobel and Laplacian Edge Detection (LED) techniques using Root Mean Square Error values. Thus the final system eliminates the noise from the input images and extracts the edges in a more effective manner and these segmented images can be further used for feature extraction and hand gesture recognition.
机译:手势可以模拟人与人之间的交互方式,因此被认为是最自然的人机交互方式。除HCI外,它们还用于各种应用程序中,例如远程控制,机器人控制,人机交互,军事应用和手语识别。手势识别通常以手势分割,特征提取和手势分类三个阶段实现。在本文中,我们比较了出于手势分割目的的各种过滤,背景减法和边缘检测技术。最初,手势是由相机捕获的,并且使用非局部均值滤波器(NLMF),反谐波均值滤波器(CMF),空间滤波器(SF)和时间中值滤波器(TMF)对这些图像进行预处理。使用信噪比和平均绝对误差比较这些滤波器的性能。然后使用高斯混合模型(GMM)减去背景,并将其结果与自适应背景混合模型(ABMM)进行比较。使用基于改进的全局群优化的Canny边缘检测(IGSOCED)执行最终边缘检测,这些结果与使用均方根误差值的Sobel和Laplacian边缘检测(LED)技术相匹配。因此,最终系统消除了输入图像中的噪声,并以更有效的方式提取了边缘,这些分割后的图像可进一步用于特征提取和手势识别。

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