SLIDE 20 Friedrich Schiller University Jena Computer Vision Group
WALI: Watch, Ask, Learn, and Improve
One Specific Instance: WALI
Key incredients: Multi-class active learning
K¨ ading et al.. Active Learning and Discovery of Object Categories in the Presence of Unnameable Instances. IEEE Conference on Computer Vision and Pattern Recognition (CVPR). 4343-4352. 2015. Freytag et al.. Selecting Influential Examples: Active Learning with Expected Model Output Changes European Conference on Computer Vision (ECCV). 562-577. 2014.
Novelty detection
Bodesheim et al.. Local Novelty Detection in Multi-class Recognition Problems IEEE Winter Conference on Applications of Computer Vision (WACV). 813-820. 2015. Bodesheim et al.. Kernel Null Space Methods for Novelty Detection IEEE Conference on Computer Vision and Pattern Recognition (CVPR). 3374-3381. 2013.
Large-scale learning
Fr¨
- hlich et al.. Large-Scale Gaussian Process Multi-Class Classification for Semantic
Segmentation and Facade Recognition Machine Vision and Applications. 24(5):1043-1053 2013. Rodner et al.. Large-Scale Gaussian Process Classification with Flexible Adaptive Histogram Kernels European Conference on Computer Vision (ECCV). 85-98. 2012.
Life-Long Learning 13