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Thai Finger-Spelling Recognition Using a Cascaded Classifier Based on Histogram of Orientation Gradient Features

机译:基于方向梯度特征直方图的级联分类器泰语拼写识别

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摘要

Hand posture recognition is an essential module in applications such as human-computer interaction (HCI), games, and sign language systems, in which performance and robustness are the primary requirements. In this paper, we proposed automatic classification to recognize 21 hand postures that represent letters in Thai finger-spelling based on Histogram of Orientation Gradient (HOG) feature (which is applied with more focus on the information within certain region of the image rather than each single pixel) and Adaptive Boost (i.e., AdaBoost) learning technique to select the best weak classifier and to construct a strong classifier that consists of several weak classifiers to be cascaded in detection architecture. We collected 21 static hand posture images from 10 subjects for testing and training in Thai letters finger-spelling. The parameters for the training process have been adjusted in three experiments, false positive rates (FPR), true positive rates (TPR), and number of training stages (N), to achieve the most suitable training model for each hand posture. All cascaded classifiers are loaded into the system simultaneously to classify different hand postures. A correlation coefficient is computed to distinguish the hand postures that are similar. The system achieves approximately 78% accuracy on average on all classifier experiments.
机译:手势识别是诸如人机交互(HCI),游戏和手语系统等应用中的基本模块,在这些应用中,性能和鲁棒性是主要要求。在本文中,我们提出了一种自动分类方法,该方法基于方向梯度直方图(HOG)功能(可以将更多的重点放在图像特定区域内的信息上,而不是每个方向上)来识别21种手势,这些手势代表泰式手指拼写中的字母单个像素)和自适应Boost(即AdaBoost)学习技术,以选择最佳的弱分类器并构建一个强分类器,该分类器由要在检测体系结构中级联的几个弱分类器组成。我们从10位受试者中收集了21张静态手势图像,以泰语字母拼写进行测试和培训。训练过程的参数已在三个实验中进行了调整,分别为假阳性率(FPR),真阳性率(TPR)和训练阶段数(N),以实现最适合每种手部姿势的训练模型。所有级联的分类器均同时加载到系统中,以对不同的手部姿势进行分类。计算相关系数以区分相似的手部姿势。在所有分类器实验中,该系统平均可实现约78%的准确度。

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