Correction: Zhang et al. TRANS-CNN-Based Gesture Recognition for mmWave Radar. Sensors 2024, 24, 1800
Huafeng Zhang, Kang Liu, Yuanhui Zhang, Jihong Lin

Abstract
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Taxonomy
TopicsHand Gesture Recognition Systems · Advanced Computing and Algorithms
Text Correction
There was an error in the original publication [1]. In Section 3.3, Paragraph 5, the sentences “Among them, the eight gestures of Up, Down, Left, CCW, draw S and draw √ have a precision of more than 97%. The accuracy rate for gesture recognition of Right, CW, and X reaches more than 96%, while the gesture recognition accuracy of Z is 94%.” were improperly expressed.
A correction has been made to Section 3.3, Paragraph 5:
To evaluate the performance of the TRANS-CNN model, 1500 samples are collected again—150 samples for each gesture—and the confusion matrix is generated using the validation set simultaneously. The performance of the model is evaluated using precision, F1-score, recall, and the confusion matrix. Precision evaluates the model’s classification accuracy on the overall data, recall is used to assess the model’s ability to recognize positive samples, the F1-score integrates the relationship between precision and recall, and the confusion matrix visualizes the model’s classification effectiveness across different categories. The specific results are shown in Table 2. The average recognition accuracy of the ten gestures reaches 98.4%. The precision, F1-score, and recall of each gesture are statistically analyzed in Table 2. Prec (precision), Recall, F1-score (F1), and Acc (accuracy) are calculated as follows:
where TP represents the number of instances where Class A is correctly identified as Class A, TN represents the number of instances where Class B is correctly identified as Class B, FP represents the number of instances where Class B is incorrectly identified as Class A, and FN represents the number of instances where Class A is incorrectly identified as Class B.
Error in Table
In the original publication, there was a mistake in Table 2. The values of the three parameters “Prec, F1, and Recall” were incorrect. The corrected Table 2 appears below:
The authors state that the scientific conclusions are unaffected. This correction was approved by the Academic Editor. The original publication has also been updated.
The reference list from the paper itself. Each links out to its DOI / PubMed record.
