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A fully automatic method for recognizing hand configurations of Brazilian sign language

机译:识别巴西手语手势的全自动方法

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Introduction Sign language is a collection of gestures, postures, movements, and facial expressions used by deaf people. The Brazilian sign language is Libras. The use of Libras has been increased among the deaf communities, but is still not disseminated outside this community. Sign language recognition is a field of research, which intends to help the deaf community communication with non-hearing-impaired people. In this context, this paper describes a new method for recognizing hand configurations of Libras - using depth maps obtained with a Kinect?? sensor. Methods The proposed method comprises three phases: hand segmentation, feature extraction, and classification. The segmentation phase is independent from the background and depends only on pixel value. The feature extraction process is independent from rotation and translation. The features are extracted employing two techniques: (2D) 2 LDA and (2D) 2 PCA. The classification employs two classifiers: a novelty classifier and a KNN classifier. A robust database is constructed for classifier evaluation, with 12,200 images of Libras and 200 gestures of each hand configuration. Results The best accuracy obtained was 96.31%. Conclusion The best gesture recognition accuracy obtained is much higher than the studies previously published. It must be emphasized that this recognition rate is obtained for different conditions of hand rotation and proximity of the depth camera, and with a depth camera resolution of only 640??480 pixels. This performance must be also credited to the feature extraction technique, and to the size standardization and normalization processes used previously to feature extraction step.
机译:简介手语是聋人使用的手势,姿势,动作和面部表情的集合。巴西手语是天秤座。在聋人社区中,天秤座的使用有所增加,但仍未在该社区以外传播。手语识别是一个研究领域,旨在帮助聋人社区与非听力障碍人士进行交流。在这种情况下,本文描述了一种新的识别天秤座手形的方法-使用通过Kinect获得的深度图?传感器。方法所提出的方法包括三个阶段:手分割,特征提取和分类。分割阶段与背景无关,并且仅取决于像素值。特征提取过程与旋转和平移无关。使用两种技术提取特征:(2D)2 LDA和(2D)2 PCA。该分类使用两个分类器:新颖性分类器和KNN分类器。构建了一个强大的数据库用于分类器评估,具有12200个天秤座图像和每个手形的200个手势。结果获得的最佳准确度为96.31%。结论获得的最佳手势识别精度比以前发表的研究要高得多。必须强调的是,这种识别率是针对手旋转和深度相机接近度的不同条件获得的,并且深度相机的分辨率仅为640-480像素。这种性能还必须归功于特征提取技术以及先前用于特征提取步骤的尺寸标准化和规范化过程。

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