Weakly Supervised Object Detection
Weakly Supervised Object Detection (WSOD) is a task in the field of computer vision that aims to train object detectors using only image-level labels. This task enhances the practicality and generalization ability of models by reducing the reliance on large amounts of annotated data, making it suitable for the rapid analysis and processing of large-scale image datasets, and thus has significant application value.
PASCAL VOC 2007
PASCAL VOC 2012 test
wetectron(single-model)
Watercolor2k
DASS-Detector (YOLOX Tiny)
Comic2k
DASS-Detector (YOLOX Tiny)
Clipart1k
DT+PL
MS-COCO-2014
Charades
Spatial Prior
MS COCO
MSLPD
ImageNet
PCL-OB-G-Ens + FRCNN
COCO test-dev
wetectron(single-model, VGG16)
HICO-DET
PeopleArt
Polyhedral MI-max
Cityscapes-to-Foggy Cityscapes
MEAA
IconArt
MI_Net [wang_revisiting_2018]
CASPAPaintings
MI-max
MS-COCO-2017
OD-WSCL
MSCOCO
CASD(ResNet50)