TinyFormer: Preserving Tiny Objects in YOLO-DETRHybridReal-time Detectors 事件
PRODUCT_LAUNCH2026-05-26影响: MEDIUM
TinyFormer: Preserving Tiny Objects in YOLO-DETRHybridReal-time Detectors arXiv:2605.25046v1 Announce Type: new Abstract: YOLO-series and DETR-based detectors struggle with tiny-object detection. YOLO-style models benefit from efficient dense prediction, but their large-stride backbones may suppress tiny instances in deep feature maps and make grid assignment ambiguous. DETR-based models remove hand-crafted post-processing through set prediction, yet they reason over coarse token grids, where t
相关产品查看全部 (10)
相关报道查看全部 (1)
TinyFormer: Preserving Tiny Objects in YOLO-DETRHybridReal-time Detectors
ArXiv CS.CV2026-05-26