Recognition of Russian and Indian Sign Languages Based on Machine Learning

M. Grif, R. Elakkiya, Alexey L. Prikhodko, M. Bakaev, Rajalakshmi E
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引用次数: 1

Abstract

In the paper, we consider recognition of sign languages (SL) with a particular focus on Russian and Indian SLs. The proposed recognition system includes five components: configuration, orientation, localization, movement and non-manual markers. The analysis uses methods of recognition of individual gestures and continuous sign speech for Indian and Russian sign languages (RSL). To recognize individual gestures, the RSL Dataset was developed, which includes more than 35,000 files for over 1000 signs. Each sign was performed with 5 repetitions and at least by 5 deaf native speakers of the Russian Sign Language from Siberia. To isolate epenthesis for continuous RSL, 312 sentences with 5 repetitions were selected and recorded on video. Five types of movements were distinguished, namely, "No gesture", "There is a gesture", "Initial movement", "Transitional movement", "Final movement". The markup of sentences for highlighting epenthesis was carried out on the Supervisely.ly platform. A recurrent network architecture (LSTM) was built, implemented using the TensorFlow Keras machine learning library. The accuracy of correct recognition of epenthesis was 95 %. The work on a similar dataset for the recognition of both individual gestures and continuous Indian sign language (ISL) is continuing. To recognize hand gestures, the mediapipe holistic library module was used. It contains a group of trained neural network algorithms that allow obtaining the coordinates of the key points of the body, palms and face of a person in the image. The accuracy of 85 % was achieved for the verification data. In the future, it is necessary to significantly increase the amount of labeled data. To recognize non-manual components, a number of rules have been developed for certain movements in the face. These rules include positions for the eyes, eyelids, mouth, tongue, and head tilt.
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基于机器学习的俄语和印度手语识别
本文主要研究了俄语和印度语手语的识别问题。该识别系统包括五个部分:形态、方向、定位、运动和非人工标记。该分析使用了识别印度和俄罗斯手语(RSL)的个体手势和连续手势语言的方法。为了识别单个手势,开发了RSL数据集,其中包括超过1000个手势的35,000多个文件。每个手势重复5次,由至少5名来自西伯利亚的俄罗斯手语聋人母语人士表演。为了分离连续RSL的扩展,我们选择了312个句子,重复5次,并进行了视频记录。分为“无手势”、“有手势”、“起始动作”、“过渡动作”、“结束动作”五种类型。在superely上进行了句子标注,以突出加注。供应平台。构建了一个循环网络架构(LSTM),并使用TensorFlow Keras机器学习库实现。正确识别鼻塞的准确率为95%。对于识别个体手势和连续印度手语(ISL)的类似数据集的工作仍在继续。为了识别手势,使用了mediapipe整体库模块。它包含一组经过训练的神经网络算法,可以获得图像中人的身体、手掌和面部关键点的坐标。验证数据的准确度达到85%。在未来,有必要显著增加标记数据的数量。为了识别非手动成分,已经为面部的某些运动制定了许多规则。这些规则包括眼睛、眼睑、嘴、舌头和头部倾斜的位置。
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