2021
DOI: 10.1155/2021/3669204
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[Retracted] Design and Implementation of Human Motion Recognition Information Processing System Based on LSTM Recurrent Neural Network Algorithm

Abstract: With the comprehensive development of national fitness, men, women, young, and old in China have joined the ranks of fitness. In order to increase the understanding of human movement, many researches have designed a lot of software or hardware to realize the analysis of human movement state. However, the recognition efficiency of various systems or platforms is not high, and the reduction ability is poor, so the recognition information processing system based on LSTM recurrent neural network under deep learnin… Show more

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Cited by 6 publications
(9 citation statements)
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References 26 publications
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“…Due to restricted processing resources, fluctuating lighting conditions, and the presence of occlusions, such as people squinting, it was a difficult assignment to complete. Moreover iris tracking had 10 additional iris landmark which gave accurate estimation for features affecting the iris, pupil, and eye contours in real time using just a single RGB camera and no specialist hardware [18]. It was also able to utilize for determining the metric distance of the camera to the user with relative error less than 10%.…”
Section: Iris Trackingmentioning
confidence: 99%
See 1 more Smart Citation
“…Due to restricted processing resources, fluctuating lighting conditions, and the presence of occlusions, such as people squinting, it was a difficult assignment to complete. Moreover iris tracking had 10 additional iris landmark which gave accurate estimation for features affecting the iris, pupil, and eye contours in real time using just a single RGB camera and no specialist hardware [18]. It was also able to utilize for determining the metric distance of the camera to the user with relative error less than 10%.…”
Section: Iris Trackingmentioning
confidence: 99%
“…In a crowded environment, datasets for people cues detection to identify a large number of human motion data [18] increases linearly and often difficult to interpret due to involvement of sequential data. LSTM is a method capable of learning order dependence in sequence prediction problems by enabling persistent error back-propagation within its inner memory cells.…”
Section: Long-short-term Memory (Lstm) Neural Networkmentioning
confidence: 99%
“…Xue Li [35] proposed a LSTM recurrent neural network which is a non-linear model being used for continuous recognition without segmentation. Xiaoshan Gao [36] mixed the IBi-LSTM network and the ILSTM network and put them into different layers to improve the prediction accuracy. In the timeline of driving intention and pattern recognition, both perception and prediction are based on Predictive models, in which HMM is a commonly used method in the field of IR.…”
Section: Abstract Analysismentioning
confidence: 99%
“…Automatic emergency braking systems [40] can become safer with the help of pedestrian route forecasts. Another direction is for human-robot collaboration [36], since it necessitates the robot's active and intelligent identification of the human operator's purpose. At the same time, a prediction math method HMM is widely used.…”
Section: Study Frontiersmentioning
confidence: 99%
“…And LSTM recursive neural network is introduced to optimize the recognition efficiency of the system, simplify the recognition process, and reduce the data loss rate caused by dimension reduction. us, the human motion recognition is realized [6]. Li et al proposed a method of coherent action recognition in live video with space-time attention and deep learning dictionary, which improved the accuracy and speed of coherent action recognition in live video [7].…”
Section: Introductionmentioning
confidence: 99%