List of Journals    /    Call For Papers    /    Subscriptions    /    Login
 
 
 
 
 SEARCH
By Author By Title
 
 
ABOUT CSC
 About CSC Journals
 CSC Journals Objectives
 List of Journals
 CALL FOR PAPERS
 Call For Papers CFP
 Special Issue CFP
AUTHOR GUIDELINES
 Submission Guidelines
 Peer Review Process
 Helpful Hints For Getting Published
 Plagiarism Policies
 Abstracting & Indexing
 Open Access Policy
 Submit Manuscript
 FOR REVIEWERS
 Reviewer Guidelines
 FOR EDITORIAL
 Editor Guidelines
 Join Us As Editor
 Launch Special Issue
 Suggest New Journal
 CSC LIBRARY
 Browse CSC Library
 Open Access Policy
  SERVICES
 Conference Partnership Program (CPP)
 Abstracting & Indexing
 SUBSCRIPTIONS
 Subscriptions
 Discounted Packages
 Archival Subscriptions
 How to Subscribe
 Librarians
 Subscriptions Agents
 Order Form
 DOWNLOADS
 
 
 
 
A New Method for Indoor-outdoor Image Classification Using Color Correlated Temperature
Full text
 PDF(1.02MB)
Source 
International Journal of Image Processing (IJIP)
Table of Contents
Download Complete Issue    PDF(2.53MB)
Volume:  6    Issue:  3
Pages:  
Publication Date:   June 2012
ISSN (Online): 1985-2304
Pages 
167 - 181
Author(s)  
 
Published Date   
20-06-2012 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   Indoor-outdoor Image Classification, Color Segmentation, Color Correlated Temperature 
 
 
No record found
 
 
In this paper a new method for indoor-outdoor image classification is presented; where the concept of Color Correlated Temperature is used to extract distinguishing features between the two classes. In this process, using Hue color component, each image is segmented into different color channels and color correlated temperature is calculated for each channel. These values are then incorporated to build the image feature vector. Besides color temperature values, the feature vector also holds information about the color formation of the image. In the classification phase, KNN classifier is used to classify images as indoor or outdoor. Two different datasets are used for test purposes; a collection of images gathered from the internet and a second dataset built by frame extraction from different video sequences from one video capturing device. High classification rate, compared to other state of the art methods shows the ability of the proposed method for indoor-outdoor image classification. 
 
 
 
1 Angadi, S.A. and M.M. Kodabagi, A Texture Based Methodology for Text Region Extraction from Low Resolution Natural Scene Images. International Journal of Image Processing, 2009. 3(5): p. 229-245.
2 Bianco, S., et al., Improving Color Constancy Using Indoor–Outdoor Image Classification. IEEE transaction on Image Processing, 2008. 17(12): p. 2381-2392.
3 Szummer, M. and R.W. Picard, Indoor-outdoor image classification, in IEEE Workshop on Content-Based Access of Image and Video Database. 1998: Bombay, India. p. 42- 51.
4 Ohta, Y.I., T. Kanade, and T. Sakai, Color information for region segmentation. Computer Graphics and Image Processing, 1980. 13(3): p. 222-241.
5 Serrano, N., A. Savakis, and J. Luo, A computationally efficient approach to indoor/outdoor scene classification, in International Conference on Pattern Recognition. 2002: QC, Canada, . p. 146-149.
6 Miene, A., et al., Automatic shot boundary detection and classification of indoor and outdoor scenes, in Information Technology, 11th Text Retrieval Conference. 2003, Citeseer. p. 615-620.
7 Qiu, G., X. Feng, and J. Fang, Compressing histogram representations for automatic colour photo categorization. Pattern Recognition, 2004. 37(11): p. 2177-2193.
8 Huang, J., et al., Image indexing using color correlograms. International Journal of Computer Vision, 2001: p. 245–268.
9 Qiu, G., Indexing chromatic and achromatic patterns for content-based colour image retrieval. Pattern Recognition, 2002. 35(8): p. 1675-1686.
10 Qiu, G. and K.M. Lam, Spectrally layered color indexing. Lecture Notes in Computer Science, 2002. 2384: p. 100-107.
11 Collier, J. and A. Ramirez-Serrano, Environment Classification for Indoor/Outdoor Robotic Mapping, in Canadian Conference on Computer and Robot Vision. 2009, IEEE. p. 276-283.
12 Boutell, M. and J. Luo, Bayesian Fusion of Camera Metadata Cues in Semantic Scene Classification, in Computer Vision and Pattern Recognition (CVPR). 2004: Washington, D.C. p. 623-630.
13 Tao, L., Y.H. Kim, and Y.T. Kim, An efficient neural network based indoor-outdoor scene classification algorithm, in International Conference on Consumer Electronics. 2010: Las Vegas, NV p. 317-318.
14 Vailaya, A., et al., Image classification for content-based indexing. IEEE Transactions on Image Processing, 2001. 10(1): p. 117-130.
15 Kim, W., J. Park, and C. Kim, A Novel Method for Efficient Indoor–Outdoor Image Classification. Signal Processing Systems, 2010. 61(3): p. 1-8.
16 Daubechies, I., Ten Lectures on Wavlets. 1992, Philadelphia: SIAM Publications.
17 Gupta, L., et al., Indoor versus outdoor scene classification using probabilistic neural network Eurasip Journal on Advances in Signal Processing, 2007. 1: p. 123-133.
18 Tolambiya, A., S. Venkatraman, and P.K. Kalra, Content-based image classification with wavelet relevance vector machines. Soft Computing, 2010. 14(2): p. 129-136.
19 Hu, G.H., J.J. Bu, and C. Chen, A novel Bayesian framework for indoor-outdoor image classification, in International Conference on Machine Learning and Cybernetics 2003: Xian. p. 3028-3032
20 Payne, A. and S. Singh, Indoor vs. outdoor scene classification in digital photographs. Pattern Recognition, 2005. 38(10): p. 1533-1545.
21 Songbo, T., An effective refinement strategy for KNN text classifier. Expert Systems with Application, 2006. 30(2): p. 290-298.
22 Shafer, S.A., Using color to separate reflection components. Color Research and Application, 1985. 10(4): p. 210.
23 Ebner, M., Color constancy. 2007, West Sussex: Wily.
24 Finlayson, G., G. Schaefer, and S. Surface, Single surface colour constancy, in 7th Color Imaging Conference: Color Science, Systems, and Applications. 1999: Scottsdale, USA. p. 106-113.
25 Cheng, H.D., et al., color image segmentation: advances and prospects. Pattern Recognition, 2001. 34(12): p. 2259-2281.
26 WNUKOWICZ, K. and W. SKARBEK, Colour temperature estimation algorithm for digital images - properties and convergence. OPTO-ELECTRONICS REVIEW, 2003. 11(3): p. 193-196.
27 Lee, H., et al., One-dimensional conversion of color temperature in perceived illumination. Consumer Electronics, IEEE Transactions on, 2001. 47(3): p. 340-346.
28 Javier, H., J. Romero, and L.R. Lee, Calculating correlated color temperatures across the entire gamut of daylight and skylight chromaticities. Applied Optis, 1999. 38(27): p. 5703-5709.
29 Robertson, A. and R. Alan, computation of Correlated Color Temperature abd Distribution Temperature. Color Research and Application, 1968. 58(11): p. 1528-1535.
30 Yang, E. and L. Wang, Joint optimization of run-length coding, Huffman coding, and quantization table with complete baseline JPEG decoder compatibility. Image Processing, IEEE Transactions on, 2009. 18(1): p. 63-74.
 
 
 
 
 
 
 
 
Ali Nadian Ghomsheh : Colleagues
Alireza Talebpour : Colleagues  
 
 
 
  Untitled Document
 
Copyrights (c) 2012 Computer Science Journals. All rights reserved.
Best viewed at 1152 x 864 resolution. Microsoft Internet Explorer.
 
  
 
Copyrights & Usage: Articles published by CSC Journals are Open Access. Permission to copy and distribute any other content, images, animation and other parts of this website is prohibited. CSC Journals has the rights to take action against individual/group if they are found victim of copying these parts of the website.