Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
533406 | Pattern Recognition | 2012 | 13 Pages |
This paper presents a novel image representation method for generic object recognition by using higher-order local autocorrelations on posterior probability images. The proposed method is an extension of the bag-of-features approach to posterior probability images. The standard bag-of-features approach is approximately thought of as a method that classifies an image to a category whose sum of posterior probabilities on a posterior probability image is maximum. However, by using local autocorrelations of posterior probability images, the proposed method extracts richer information than the standard bag-of-features. Experimental results reveal that the proposed method exhibits higher classification performances than the standard bag-of-features method.
► Proposed an image description method using HLAC feature on posterior probability images. ► The proposed method overcomes the limitation of spatial information of the bag-of-features. ► The proposed method exhibits higher classification performances than the bag-of-features.