摘要Background:Chinese herbal pieces are an essential component of traditional Chinese medicine.Accurate identification and clas-sification of these materials are crucial in clinical practice.Objective:This study aims to enhance the recognition efficiency of Chinese herbal pieces using deep learning technology,while addressing the limitations of traditional manual classification methods in terms of both quality and efficiency.Methods:A comprehensive dataset containing 201 types of Chinese herbal pieces was established.Based on Real-time Detection Transformer(RT-DETR),we designed and integrated a Feature-focused Diffusion Network(FDN),resulting in an improved model termed RT-DETR-FDN.The proposed FDN includes a Feature-focus Module and a feature diffusion mechanism,enabling the model to capture more extensive feature information from Chinese herbal pieces and diffuse it across multiple detection scales.Results:Experimental results show that RT-DETR-FDN achieved a precision of 0.925,a recall of 0.943,and an mAP50-95 of 0.851.In addition,the model was compared with representative You Only Look Once series models commonly used in object detec-tion.Compared with these models,RT-DETR-FDN achieved higher recognition accuracy while maintaining a lightweight architecture.Conclusion:This study integrates deep learning with traditional Chinese medicine,providing a more effective solution for the rec-ognition of Chinese herbal pieces.
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