In this competition we employed a model fusion approach to achieve object
detection results close to those of real images. Our method is based on the
CO-DETR model, which was trained on two sets of data: one containing images
under dark conditions and another containing images enhanced with low-light
conditions. We used various enhancement techniques on the test data to generate
multiple sets of prediction results. Finally, we applied a clustering
aggregation method guided by IoU thresholds to select the optimal results