Multi-fold MIL Training for Weakly Supervised Object Localization - Inria - Institut national de recherche en sciences et technologies du numérique Access content directly
Conference Papers Year : 2014

Multi-fold MIL Training for Weakly Supervised Object Localization

Ramazan Gokberk Cinbis
  • Function : Author
  • PersonId : 933132
Jakob Verbeek
Cordelia Schmid
  • Function : Author
  • PersonId : 831154

Abstract

Object category localization is a challenging problem in computer vision. Standard supervised training requires bounding box annotations of object instances. This time-consuming annotation process is sidestepped in weakly supervised learning. In this case, the supervised information is restricted to binary labels that indicate the absence/presence of object instances in the image, without their locations. We follow a multiple-instance learning approach that iteratively trains the detector and infers the object locations in the positive training images. Our main contribution is a multi-fold multiple instance learning procedure, which prevents training from prematurely locking onto erroneous object locations. This procedure is particularly important when high-dimensional representations, such as the Fisher vectors, are used. We present a detailed experimental evaluation using the PASCAL VOC 2007 dataset. Compared to state-of-the-art weakly supervised detectors, our approach better localizes objects in the training images, which translates into improved detection performance.
Fichier principal
Vignette du fichier
paper.pdf (1.49 Mo) Télécharger le fichier
Vignette du fichier
hal.png (289.86 Ko) Télécharger le fichier
Origin : Files produced by the author(s)
Format : Figure, Image
Loading...

Dates and versions

hal-00975746 , version 1 (09-04-2014)

Identifiers

Cite

Ramazan Gokberk Cinbis, Jakob Verbeek, Cordelia Schmid. Multi-fold MIL Training for Weakly Supervised Object Localization. CVPR - IEEE Conference on Computer Vision & Pattern Recognition, Jun 2014, Columbus, United States. pp.2409-2416, ⟨10.1109/CVPR.2014.309⟩. ⟨hal-00975746⟩
1168 View
3890 Download

Altmetric

Share

Gmail Facebook X LinkedIn More