Relevance feedback [1] has been a powerful tool for interactive Content-Based Image Retrieval (CBIR). During the retrieval process, the user selects the most relevant images and provides a weight of preference for each relevant image. User’s high level query and perception subjectivity can be captured to some extent by dynamically updated low-level feature weights based on the user’s feedback. However, in MARS [2] only the positive feedbacks, i.e., relevant images are considered. In this paper, a novel approach is proposed by providing both positive and negative feedbacks for Support Vector Machines (SVM) learning. The SVM learning results are used to update the weights of preference for relevant images. Priorities are given to the positive feedbacks that have larger distances to the hyperplane determined by the support vectors. This approach releases the user from manually providing preference weight for each positive example, i.e., relevant image as before. Experimental results ...
Qi Tian, Pengyu Hong, Thomas S. Huang