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This study focuses on real-time hand gesture recognition in the Turkish sign language detection system. YOLOv4-CSP based on convolutional neural network (CNN), a state-of-the-art object detection algorithm, is used to provide real-time and high-performance detection. The YOLOv4-CSP algorithm is created by adding CSPNet to the neck of the original YOLOv4 to improve network performance. A new object detection model has been proposed by optimizing the YOLOv4-CSP algorithm in order to provide more efficient detection in Turkish sign language. The model uses CSPNet throughout the network to increase the learning ability of the network. However, Proposed YOLOv4-CSP has a learning model with Mish activation function, complete intersection of union (CIoU) loss function and transformer block added. The Proposed YOLOv4-CSP algorithm has faster learning with transfer learning than previous versions. This allows the proposed YOLOv4-CSP algorithm to perform a faster restriction and recognition of static hand signals simultaneously. To evaluate the speed and detection performance of the proposed YOLOv4-CSP model, it is compared with previous YOLO series, which offers real-time detection, as well. YOLOv3, YOLOv3-SPP, YOLOv4-CSP and proposed YOLOv4-CSP models are trained with a labeled dataset consisting of numbers in Turkish Sign language, and their performances on the hand signals recognitions are compared. With the proposed method, 98.95% precision, 98.15% recall, 98.55 F1 score and 99.49% mAP results are obtained in 9.8 ms. The proposed method for detecting numbers in Turkish sign language outperforms other algorithms with both real-time performance and accurate hand sign prediction, regardless of background.
This study focuses on real-time hand gesture recognition in the Turkish sign language detection system. YOLOv4-CSP based on convolutional neural network (CNN), a state-of-the-art object detection algorithm, is used to provide real-time and high-performance detection. The YOLOv4-CSP algorithm is created by adding CSPNet to the neck of the original YOLOv4 to improve network performance. A new object detection model has been proposed by optimizing the YOLOv4-CSP algorithm in order to provide more efficient detection in Turkish sign language. The model uses CSPNet throughout the network to increase the learning ability of the network. However, Proposed YOLOv4-CSP has a learning model with Mish activation function, complete intersection of union (CIoU) loss function and transformer block added. The Proposed YOLOv4-CSP algorithm has faster learning with transfer learning than previous versions. This allows the proposed YOLOv4-CSP algorithm to perform a faster restriction and recognition of static hand signals simultaneously. To evaluate the speed and detection performance of the proposed YOLOv4-CSP model, it is compared with previous YOLO series, which offers real-time detection, as well. YOLOv3, YOLOv3-SPP, YOLOv4-CSP and proposed YOLOv4-CSP models are trained with a labeled dataset consisting of numbers in Turkish Sign language, and their performances on the hand signals recognitions are compared. With the proposed method, 98.95% precision, 98.15% recall, 98.55 F1 score and 99.49% mAP results are obtained in 9.8 ms. The proposed method for detecting numbers in Turkish sign language outperforms other algorithms with both real-time performance and accurate hand sign prediction, regardless of background.
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Text is an essential means for humans to acquire information and engage in social communication. Accurate text extraction from images is crucial for various tasks in real-life scenarios and scene understanding. However, text detection and recognition in natural scenes are challenged by noise in the images, irregular distribution of text fonts, and degradation of image quality under complex acquisition conditions. These factors severely impact the accuracy of text recognition. Issues such as poor image quality, diverse text formats, and complex image backgrounds significantly affect the accuracy of the recognition, and these challenges remain urgent to be addressed in the field. To address these challenges, this paper proposes a transformer-based scene image text detection and recognition algorithm within a multi-scale end-to-end framework. Firstly, by integrating detection and recognition stages into an end-to-end framework, the process is simplified, reducing computation and errors. Subsequently, multi-scale characteristics are incorporated to effectively capture text information at various scales, enhancing recognition accuracy and robustness through feature fusion and anti-interference capability. Lastly, leveraging the transformer framework, the algorithm efficiently handles text information of different scales and positions, improving generalization ability. The self-attention mechanism, multi-layer stacking structure, and positional encoding in the transformer framework contribute to its effectiveness in processing diverse text information. Through validation, the proposed method demonstrates improved efficiency in scene text detection and recognition.INDEX TERMS text detection; text recognition; transformer; end-to-end; multi-scale I. INTRODUCTION
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