Title :
Instance selection from regions with uncertain semantics to words
Author :
Sheng Xu ; Jing Cao
Author_Institution :
Coll. of Comput. & Inf., HoHai Univ., Nanjing, China
Abstract :
Multi-instance model has been employed in image retrieval for its excellent performance to deal with the ambiguities in an image. However, many multi-instance learning methods such as Diverse Density and so on cannot meet the requirement of real-time and the retrieval accuracy, so need to be improved. This paper selects instances from regions to words to make the regions full of semantics and become more and more certain. Firstly, it applies Mean Shift to adaptively segment the image. Secondly, it extracts the spatial invariant feature of each region and gets the sparse code. Finally, we apply max-pooling function to the code vector and acquire the feature vector of each instance. At last, we choose MI-SVM as the multi-instance learning method. Experiments illustrate that the precision is improved distinctly and the retrieval time can meet the requirement of real-time.
Keywords :
feature extraction; image retrieval; image segmentation; learning (artificial intelligence); support vector machines; MI-SVM; code vector; diverse density; feature vector; image retrieval; image segmentation; instance selection; max-pooling function; mean shift; multiinstance learning methods; sparse code; spatial invariant feature extraction; uncertain semantics; Buildings; Dictionaries; Dinosaurs; Image segmentation; Positron emission tomography;
Conference_Titel :
Advanced Computational Intelligence (ICACI), 2015 Seventh International Conference on
Conference_Location :
Wuyi
Print_ISBN :
978-1-4799-7257-9
DOI :
10.1109/ICACI.2015.7184713