复杂背景下的手部检测和手势识别

S.GNANAPRIYA GP, K. Rahimunnisa, M. Sowmiya, P. Deepika, S. P. R. Kamala
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引用次数: 0

摘要

本文提出了一种基于卷积神经网络(CNN)的手部检测模型,该模型主要使用Open-CV库进行实时计算机视觉,仅聚焦和分割来自任何复杂背景的手部。基于从感兴趣区域提取的特征,VGG16 CNN架构基于训练数据对手势进行分类和预测。该系统使用二值图像进行训练,从而消除背景,只对边缘进行分类。这种方法增加了系统在时间方面的性能。该系统的主要步骤是背景消除,使用一系列Open-CV方法和函数进行背景消除。手检测系统在从手语检测到人机交互的各个领域都有应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hand Detection and Gesture Recognition in Complex Backgrounds
In this paper, a Convolutional Neural Networks (CNN) based hand detection model that, on a major note, focuses and segments only the hands from any complex background using the Open-CV libraries for real-time computer vision, is proposed. Based on the features extracted from the region of interest, the VGG16 CNN Architecture classifies and predicts the gestures, based on the trained data. The system is trained by using binary images, so that the background is eliminated and classification is done only on the edges. This approach increases the performance of the system with respect to time. The major step involved in the proposed system is Background Elimination, which is carried out using a series of Open-CV methods and functions. Hand Detection Systems find applications in various domains ranging from Sign-Language Detection to Human-Computer Interaction.
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