DocumentCode :
52977
Title :
Adaptive Scene Category Discovery With Generative Learning and Compositional Sampling
Author :
Liang Lin ; Ruimao Zhang ; Xiaohua Duan
Author_Institution :
Key Lab. of Machine Intell. & Adv. Comput., Sun Yat-Sen Univ., Guangzhou, China
Volume :
25
Issue :
2
fYear :
2015
fDate :
Feb. 2015
Firstpage :
251
Lastpage :
260
Abstract :
This paper investigates a general framework to discover categories of unlabeled scene images according to their appearances (i.e., textures and structures). We jointly solve the two coupled tasks in an unsupervised manner: 1) classifying images without predetermining the number of categories and 2) pursuing generative model for each category. In our method, each image is represented by two types of image descriptors that are effective to capture image appearances from different aspects. By treating each image as a graph vertex, we build up a graph and pose the image categorization as a graph partition process. Specifically, a partitioned subgraph can be regarded as a category of scenes and we define the probabilistic model of graph partition by accumulating the generative models of all separated categories. For efficient inference with the graph, we employ a stochastic cluster sampling algorithm, which is designed based on the Metropolis-Hasting mechanism. During the iterations of inference, the model of each category is analytically updated by a generative learning algorithm. In the experiments, our approach is validated on several challenging databases, and it outperforms other popular state-of-the-art methods. The implementation details and empirical analysis are presented as well.
Keywords :
data mining; graph theory; image classification; image representation; image sampling; image texture; inference mechanisms; iterative methods; learning (artificial intelligence); pattern clustering; probability; stochastic processes; Metropolis-Hasting mechanism; adaptive scene category discovery; compositional sampling; generative learning algorithm; graph partition process; graph vertex; image appearance; image categorization; image classification; image descriptor; image representation; image structure; image texture; inference iteration; probabilistic model; stochastic cluster sampling algorithm; unlabeled scene images; Clustering algorithms; Image edge detection; Inference algorithms; Joining processes; Mathematical model; Partitioning algorithms; Visualization; Generative learning; graph partition; scene understanding; unsupervised categorization;
fLanguage :
English
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
Publisher :
ieee
ISSN :
1051-8215
Type :
jour
DOI :
10.1109/TCSVT.2014.2313897
Filename :
6778797
Link To Document :
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