基于半监督学习的手势识别模型

Meiping Tao, Li Ma
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引用次数: 5

摘要

传统的基于视觉的手势识别技术需要大量的光环境和背景。针对上述问题,本文提出了一种新的手势识别模型,该模型采用无监督稀疏自编码器神经网络模型对图像patch进行训练,提取边缘特征即权重,并将聚类特征作为分类器的输入进行分类。对整个网络的参数进行微调,最终是为了提高分类精度。
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A Hand Gesture Recognition Model Based on Semi-supervised Learning
The traditional vision based hand gesture recognition technology requires a lot of light environment and backgrounds. Focused on these above problems, this paper presents a new hand gesture recognition model, in which, the unsupervised sparse auto-encoder neural network model is applied to train the image patches, in order to extract the edge feature that is the weight, and the pooled features are used as the input of the classifier for classification. The fine turning for the parameter of the entire net is to improve the classification accuracy finally.
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