An optimized automated recognition of infant sign language using enhanced convolution neural network and deep LSTM

被引:0
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作者
Vamsidhar Enireddy
J. Anitha
N. Mahendra
G. Kishore
机构
[1] Koneru Lakshmaiah Education Foundation,Department of Computer Science and Engineering
[2] Malla Reddy Engineering College (Autonomous),Department of Computer Science and Engineering
[3] Miracle Educational Society Group of Institutions,Department of CSE
[4] RISE Krishna Sai Prakasam Group of Institutions,undefined
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关键词
Baby sign language; Automated recognition; Computer vision; Optimization;
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摘要
In the world, several sign languages (SL) are used, and BSL (Baby Sign Language) is the process of communication between the parents and baby using gestures. Communication by gestures is a non-verbal process that utilizes motion to pass on realities, expressions and feelings to people. SL is the communication mode in which the information is conveyed via movement of body parts like cheeks, eyebrows and head. Even though many research works based on SL are available, research in BSL remains a challenge. Hence, this paper presents an optimization-based automated recognition of the deep BSL system, which determines the gesture signalled by the kids. Initially, the image frames are extracted from the videos and data augmentation processes are performed. After pre-processing, the features are extracted from the frames using the Enhanced Convolution Neural Network (ECNN). The optimal characteristics are then selected by a new Life Choice Based Optimizer (LCBO). Finally, the classification is carried out by the Deep Long Short-Term Memory (DLSTM) scheme. The implementation is performed on the Python platform, and the performances are evaluated using several performance metrics such as accuracy, precision, kappa, f1-score and recall. The performance of the proposed approach (ECNN-DLSTM) is compared with several deep and machine learning approaches and obtains an accuracy of 99% and a kappa of 96%.
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页码:28043 / 28065
页数:22
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