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Cyrillic manual alphabet recognition in RGB and RGB-D data for sign language interpreting robotic system (SLIRS)

机译:RGB和RGB-D数据中的西里尔手工字母表识别,用于手语解释机器人系统(SIRIRS)

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Deaf-mute communities around the world experience a need in effective human-robot interaction system that would act as an interpreter in public places such as banks, hospitals, or police stations. The focus of this work is to address the challenges presented to hearing-impaired people by developing an interpreting robotic system required for effective communication in public places. To this end, we utilize a previously developed neural network-based learning architecture to recognize Cyrillic manual alphabet, which is used for fingerspelling in Kazakhstan. In order to train and test the performance of the recognition system, we collected four datasets comprising of static and motion RGB and RGB-D data of 33 manual gestures. After applying them to standard machine learning algorithms as well as to our previously developed learning-based method, we achieved an average accuracy of 93% for a complete alphabet recognition by modeling motion depth data.
机译:世界各地的聋哑社区在有效的人机互动系统中经历了需要作为银行,医院或警察站等公共场所的口译员。这项工作的重点是通过开发在公共场所有效沟通所需的解释机器人系统来解决对听力受损的人提出的挑战。为此,我们利用先前开发的基于神经网络的学习架构来识别西里尔语手册字母表,该字母表用于哈萨克斯坦的手指。为了训练和测试识别系统的性能,我们收集了四个数据集,包括33手动手势的静态和运动RGB和RGB-D数据。将它们应用于标准机器学习算法以及我们以前开发的基于学习的方法后,我们通过建模运动深度数据来实现完整的字母识别的平均精度为93 %。

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