Convolutional Neural Network Array for Sign Language Recognition Using Wearable IMUs

Karush Suri, Rinki Gupta
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引用次数: 11

Abstract

Advancements in gesture recognition algorithms have led to a significant growth in sign language translation. By making use of efficient intelligent models, signs can be recognized with precision. The proposed work presents a novel one-dimensional Convolutional Neural Network (CNN) array architecture for recognition of signs from the Indian sign language using signals recorded from a custom designed wearable IMU device. The IMU device makes use of tri-axial accelerometer and gyroscope. The signals recorded using the IMU device are segregated on the basis of their context, such as whether they correspond to signing for a general sentence or an interrogative sentence. The array comprises of two individual CNNs, one classifying the general sentences and the other classifying the interrogative sentence. Performances of individual CNNs in the array architecture are compared to that of a conventional CNN classifying the unsegregated dataset. Peak classification accuracies of 94.20% for general sentences and 95.00% for interrogative sentences achieved with the proposed CNN array in comparison to 93.50% for conventional CNN assert the suitability of the proposed approach.
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基于可穿戴imu的卷积神经网络阵列手语识别
手势识别算法的进步导致了手语翻译的显著增长。通过使用高效的智能模型,可以精确地识别符号。这项工作提出了一种新的一维卷积神经网络(CNN)阵列架构,用于使用定制设计的可穿戴IMU设备记录的信号识别来自印度手语的信号。IMU装置采用三轴加速度计和陀螺仪。使用IMU设备记录的信号是根据其上下文进行区分的,例如它们是对应于一般句子还是疑问句的签名。该数组由两个独立的cnn组成,一个对一般句子进行分类,另一个对疑问句进行分类。将阵列架构下单个CNN的性能与传统CNN对未分离数据集进行分类的性能进行了比较。与传统CNN的93.50%相比,本文提出的CNN阵列对一般句和疑问句的最高分类准确率分别达到了94.20%和95.00%,这表明本文提出的方法是合适的。
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