Abstract
In this paper, a novel multi-instance learning (MIL) algorithm based on pyramid match kernel (PMK) and classifier ensemble is proposed for recognizing pornographic scene from image database. First, an improved JSEG image segmentation technique is deployed for dividing every image into several regions, and regards the whole image as a "bag", the low-level visual features (i.e. color and texture) of each segmented region as "instance". As a result, the pornographic images filtering problem can be transferred into a typical MIL problem. Second, similarity between the multi-instance bags is measured by PMK method, which allows MIL problem to be solved directly by the support vector machine (SVM). Finally, many base classifiers based on PMK with different levels are constructed, and the performance weighting rule is used to dynamically determine the weights of them, so the strategy of classifier ensemble is used to improve the filtering accuracy. In a real condition image set that the ratio of normal image to pornographic image is 9:1, experimental results show that the proposed algorithm, named PMKCE-MIL, is robust, and its performance is superior to other algorithms.
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More From: International Journal of Pattern Recognition and Artificial Intelligence
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