1 Introduction
Relevance feedback [21] is an important tool to improve the performance of content-based image retrieval (CBIR) [22]. In a relevance feedback process, the user first labels a number of relevant retrieval results as positive feedback samples and some irrelevant retrieval results as negative feedback samples. Then, a CBIR system refines all retrieval results based on these feedback samples. These two steps are carried out iteratively to improve the performance of the image retrieval system by gradually learning the user's preferences.