DocumentCode
2958245
Title
Adaptive deconvolutional networks for mid and high level feature learning
Author
Zeiler, Matthew D. ; Taylor, Graham W. ; Fergus, Rob
Author_Institution
Dept. of Comput. Sci., New York Univ., New York, NY, USA
fYear
2011
fDate
6-13 Nov. 2011
Firstpage
2018
Lastpage
2025
Abstract
We present a hierarchical model that learns image decompositions via alternating layers of convolutional sparse coding and max pooling. When trained on natural images, the layers of our model capture image information in a variety of forms: low-level edges, mid-level edge junctions, high-level object parts and complete objects. To build our model we rely on a novel inference scheme that ensures each layer reconstructs the input, rather than just the output of the layer directly beneath, as is common with existing hierarchical approaches. This makes it possible to learn multiple layers of representation and we show models with 4 layers, trained on images from the Caltech-101 and 256 datasets. When combined with a standard classifier, features extracted from these models outperform SIFT, as well as representations from other feature learning methods.
Keywords
deconvolution; feature extraction; image classification; image representation; inference mechanisms; learning (artificial intelligence); Caltech-101 datasets; Caltech-256 datasets; adaptive deconvolutional networks; classifier; complete objects; convolutional sparse coding; feature extraction; hierarchical model; high level feature learning; high-level object parts; image decompositions; inference scheme; low-level edges; max pooling; mid level feature learning; mid-level edge junctions; natural images; Adaptation models; Computational modeling; Deconvolution; Image reconstruction; Mathematical model; Switches; Training;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Vision (ICCV), 2011 IEEE International Conference on
Conference_Location
Barcelona
ISSN
1550-5499
Print_ISBN
978-1-4577-1101-5
Type
conf
DOI
10.1109/ICCV.2011.6126474
Filename
6126474
Link To Document