DocumentCode
3672365
Title
Detector discovery in the wild: Joint multiple instance and representation learning
Author
Judy Hoffman;Deepak Pathak;Trevor Darrell;Kate Saenko
Author_Institution
UC Berkeley, USA
fYear
2015
fDate
6/1/2015 12:00:00 AM
Firstpage
2883
Lastpage
2891
Abstract
We develop methods for detector learning which exploit joint training over both weak (image-level) and strong (bounding box) labels and which transfer learned perceptual representations from strongly-labeled auxiliary tasks. Previous methods for weak-label learning often learn detector models independently using latent variable optimization, but fail to share deep representation knowledge across classes and usually require strong initialization. Other previous methods transfer deep representations from domains with strong labels to those with only weak labels, but do not optimize over individual latent boxes, and thus may miss specific salient structures for a particular category. We propose a model that subsumes these previous approaches, and simultaneously trains a representation and detectors for categories with either weak or strong labels present. We provide a novel formulation of a joint multiple instance learning method that includes examples from classification-style data when available, and also performs domain transfer learning to improve the underlying detector representation. Our model outperforms known methods on ImageNet-200 detection with weak labels.
Keywords
"Detectors","Optimization","Training","Feature extraction","Joints","Visualization","Training data"
Publisher
ieee
Conference_Titel
Computer Vision and Pattern Recognition (CVPR), 2015 IEEE Conference on
Electronic_ISBN
1063-6919
Type
conf
DOI
10.1109/CVPR.2015.7298906
Filename
7298906
Link To Document