报告题目:Random Forest for Image Annotation or Fast Semantic Nearest Neighbour Search
报告人:Guoping Qiu (邱国平教授)
报告时间:2012年12月19日下午14:30---15:20
报告地点:南一楼中311室
Abstract:
This talk presents a novel method for automatic image annotation (which can also be understood as a fast semantic nearest neighbour search method). We use the tags contained in the training images as the supervising information to guide the generation of random trees, thus making the retrieved nearest neighbor images not only visually alike but also semantically related. Different from conventional decision tree methods, which fuse the information contained at each leaf node individually, our method treats the random forest as a whole, and introduces the new concepts of semantic nearest neighbors (SNN) and semantic similarity measure (SSM). We introduce a method to annotate an image from the tags of its SNN based on SSM and have developed a novel learning to rank algorithm to systematically assign the optimal tags to the image. The new technique is intrinsically scalable and fast, and we will present experimental results to demonstrate that it is competitive to state of the art image annotation methods. (Contents of this talk has appeared as “Hao Fu, Qian Zhang, Guoping Qiu: Random Forest for Image Annotation. ECCV (6) 2012: 86-99”)