Title
Food-101 - Mining Discriminative Components with Random Forests.
Abstract
In this paper we address the problem of automatically recognizing pictured dishes. To this end, we introduce a novel method to mine discriminative parts using Random Forests (rf), which allows us to mine for parts simultaneously for all classes and to share knowledge among them. To improve efficiency of mining and classification, we only consider patches that are aligned with image superpixels, which we call components. To measure the performance of our rf component mining for food recognition, we introduce a novel and challenging dataset of 101 food categories, with 101’000 images. With an average accuracy of 50.76%, our model outperforms alternative classification methods except for cnn, including svm classification on Improved Fisher Vectors and existing discriminative part-mining algorithms by 11.88% and 8.13%, respectively. On the challenging mit-Indoor dataset, our method compares nicely to other s-o-a component-based classification methods.
Year
DOI
Venue
2014
10.1007/978-3-319-10599-4_29
ECCV (6)
Keywords
Field
DocType
Image classification,Discriminative part mining,Random Forest,Food recognition
Fisher vector,Computer science,Food recognition,Support vector machine,Artificial intelligence,Contextual image classification,Random forest,Discriminative model,Machine learning
Conference
Citations 
PageRank 
References 
129
3.64
34
Authors
3
Search Limit
100129
Name
Order
Citations
PageRank
Lukas Bossard12027.74
Matthieu Guillaumin2172668.77
Luc Van Gool3275661819.51