基于随机森林和线性判别分析的实时手势识别

O. Sangjun, R. Mallipeddi, Minho Lee
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引用次数: 10

摘要

本文提出了一种实时的手势检测与识别方法。该方法包括检测、验证和识别三个步骤。在检测阶段,随机森林手部检测器在整个图像上检测估计包含手部形状的几个区域。接下来的步骤是验证和识别阶段。为了检查每个区域是否有手,我们使用了线性判别分析。所提出的工作是基于假设具有相似姿态的样本在高维空间中彼此靠近分布。因此,随机森林的训练数据也是在三维空间中进行分析的。在降维空间中,我们可以确定验证和分类的决策条件。在检测到手的确切区域后,我们需要在附近的区域搜索手。它减少了手工检测过程的处理时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real Time Hand Gesture Recognition Using Random Forest and Linear Discriminant Analysis
This paper presents a real-time hand gesture detection and recognition method. Proposed method consists of three steps - detection, validation and recognition. In the detection stage, several areas, estimated to contain hand shapes are detected by random forest hand detector over the whole image. The next steps are validation and recognition stages. In order to check whether each area contains hand or not, we used Linear Discriminant Analysis. The proposed work is based on the assumption that samples with similar posture are distributed near each other in high dimensional space. So, training data used for random forest are also analyzed in three dimensional space. In the reduced dimensional space, we can determine decision conditions for validation and classification. After detecting exact area of hand, we need to search for hand just in the nearby area. It reduces processing time for hand detection process.
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