基于形状上下文分析的手势识别

S. Qaisar, M. Krichen, A. Mihoub
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引用次数: 0

摘要

技术的进步使人机交互(HCI)不断发展。目标是将HCI改进到计算机可以以自然方式交互的水平。这是一个要求很高的目标,并使当代HCI系统保持复杂性和挑战性。本文旨在开发一种有效的基于人机交互的手势识别方法。该算法通过预处理、特征提取和分类三个阶段来实现。利用彩色图像数据库对系统功能进行了研究。每个传入实例都表示一个手势。首先,它从背景模板中减去,专注于预期的手势。然后对减后的图像进行增强,然后将其转换为灰度图像,然后通过将其转换为二值图像进行阈值处理。通过使用形态过滤器进一步增强了这种分段版本。利用灰度像素值和形状上下文分析(SC)提取特征。使用k-最近邻(k-NN)分类算法自动识别手势。该系统实现了83.3%的手势识别精度。分类决策被传送到前端嵌入式控制器,用于系统的驱动和动作。
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Hand Gesture Recognition Based on Shape Context Analysis
The technological advancement is evolving the human–computer interaction (HCI). The goal is to ameliorate the HCI to a level where computers can be interacted in a natural way. It is a demanding aim and keeps the contemporary HCI systems complex and challenging. This paper aims to develop an effective hand gesture identification piloted HCI. It is realizable by three stages of preprocessing, features extraction and classification. The system functionality is studied by using a colored images database. Each incoming instance presents a hand gesture. Firstly it is subtracted from the background template to focus on the intended hand gesture. Afterward the subtracted image is enhanced and then converted into the grayscale one which is then thresholded by converting it in a binary image. This segmented version is further enhanced by using the morphological filters. The features are extracted by using the grayscale pixel values and shape context analysis (SC). Gestures are automatically recognized by using the k-Nearest Neighbor (k-NN) classification algorithm. The system achieves 83.3% of gesture recognition precision. The classification decisions are conveyed to the front-end embedded controller for systematic actuations and actions.
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