
Advancements in object detection have resulted in more efficient YOLO-based systems, outperforming alternatives such as RetinaNet, Fast R-CNN, and SSD in terms of speed, accuracy, and learning capability (Alqarqaz et al., 2023). Figure 2 provides a visual representation of the comparative performance of these algorithms. To enhance detection accuracy while maintaining real-time performance, the authors in (Menaka et al., 2020) have explored a hybrid method that merges YOLO with Faster R-CNN. In this framework, YOLO quickly identifies potential object regions by drawing bounding boxes, and Faster R-CNN refines these results using its RoI pooling for accurate classification and segmentation.
See full paper here: https://brain.edusoft.ro/index.php/brain/article/view/1954
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