基于改进质心分水岭算法和双通道CNN的静态手势识别模型

Xude Dong, Yuanping Xu, Zhijie Xu, Jian Huang, Jun Lu, Chaolong Zhang, Li Lu
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引用次数: 3

摘要

为了有效、智能地实现复杂类皮肤背景区域内的静态手势识别,本研究提出了一种基于改进形心分水岭算法(ICWA)和双通道卷积神经网络(DCCNN)结构的集成手势识别模型。该方法的有效性源于使用ICWA从原始图像中更准确地分割手势。然后将分割后的图像和从原始图像中提取的相应的局部二值模式(Local Binary Patterns, LBP)特征分别作为所设计的DCCNN的两个通道的输入进行分类。本研究的贡献包括在YCrCb色彩空间分割时减少图像梯度差异的创新方法,以及融合主成分分析(PCA)降维和识别手掌和手臂之间割线的凹度检测过程。设计的DCCNN通过采用独立的双卷积神经网络框架处理不同尺度上更丰富的特征,显著提高了静态手势分类的准确率。对基准数据库的测试和评估表明,所设计的模型和技术在具有挑战性的类似皮肤的背景条件下运行时,具有明显的优势,优于经典方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Static Hand Gesture Recognition Model based on the Improved Centroid Watershed Algorithm and a Dual-Channel CNN
In order to achieve static hand gesture recognization within complex skin-like background regions in an effective and intelligent manner, this study proposed an integrated hand gesture recognition model based on the improved centroid watershed algorithm (ICWA) and a dual-channel convolutional neural network (DCCNN) structure. The effectiveness of this approach stemmed from more accurate segmentation of hand gestures from an original image by using the ICWA. The segmented image and the corresponding Local Binary Patterns (LBP) features extracted from the original image then serve as inputs for two channels of the devised DCCNN respectively for classification. The contributions of this study included an innovative method for reducing the image gradient difference while segmenting in the YCrCb color space, and the fusion of both Principal Component Analysis (PCA) for dimension reduction and a convexity detection process for identifying the secant line between the palm and arm. The devised DCCNN enables significant improvement on the static hand gesture classification accuracy by employing independent dual-convolution neural network framework for dealing with richer features at different scales. Tests and evaluations on benchmarking databases demonstrated that the devised models and techniques outperform classic methods with distinctive advantages when operating under challenging skin-like background conditions.
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