SCC-YOLO: An Improved Object Detector for Assisting in Brain Tumor Diagnosis
- URL: http://arxiv.org/abs/2501.03836v2
- Date: Mon, 13 Jan 2025 14:10:16 GMT
- Title: SCC-YOLO: An Improved Object Detector for Assisting in Brain Tumor Diagnosis
- Authors: Runci Bai,
- Abstract summary: We develop a novel SCC-YOLO architecture by integrating the SCConv attention mechanism into YOLOv9.
SCC-YOLO has reached state-of-the-art performance in brain tumor detection.
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- Abstract: Brain tumors can result in neurological dysfunction, alterations in cognitive and psychological states, increased intracranial pressure, and the occurrence of seizures, thereby presenting a substantial risk to human life and health. The You Only Look Once(YOLO) series models have demonstrated superior accuracy in object detection for medical imaging. In this paper, we develop a novel SCC-YOLO architecture by integrating the SCConv attention mechanism into YOLOv9. The SCConv module reconstructs an efficient convolutional module by reducing spatial and channel redundancy among features, thereby enhancing the learning of image features. We investigate the impact of intergrating different attention mechanisms with the YOLOv9 model on brain tumor image detection using both the Br35H dataset and our self-made dataset(Brain_Tumor_Dataset). Experimental results show that on the Br35H dataset, SCC-YOLO achieved a 0.3% improvement in mAp50 compared to YOLOv9, while on our self-made dataset, SCC-YOLO exhibited a 0.5% improvement over YOLOv9. SCC-YOLO has reached state-of-the-art performance in brain tumor detection. Source code is available at : https://jihulab.com/healthcare-information-studio/SCC-YOLO/-/tree/master
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