Tracking motorcycles in urban surveillance environments presents technical challenges due to their small size, high mobility, and frequent occlusions. In this paper, we propose a framework that enhances motorcycle ReID(Re-Identification) accuracy by a...
Tracking motorcycles in urban surveillance environments presents technical challenges due to their small size, high mobility, and frequent occlusions. In this paper, we propose a framework that enhances motorcycle ReID(Re-Identification) accuracy by applying algorithms robust to small object detection. First, real-time object detection is performed using YOLOv11, and to improve the representation and detection performance of small objects, we apply SF(Slicing Aided Fine-tuning) and SAHI(Slicing Aided Hyper Inference). The detected motorcycle objects are systematically grouped and annotated to build a robust ReID dataset. Using a transfer learning-based ReID model, each motorcycle is assigned a unique ID, and similarity-based identification is conducted. The proposed framework supports motorcycle tracking in multi-camera environments and query-based retrieval, enabling accurate identification through visual similarity ranking.