DocumentCode :
681189
Title :
A bag-of-bounding-boxes approach to object-level view image retrieval
Author :
Masatoshi, Ando ; Kanji, Tanaka ; Yousuke, Inagaki
Author_Institution :
Department of Human and Artificial Intelligent Systems, University of Fukui, Japan
fYear :
2013
fDate :
14-17 Sept. 2013
Firstpage :
2457
Lastpage :
2463
Abstract :
We propose a novel bag-of-words (BoW) framework to build and retrieve a compact database of view images, toward robotic localization, mapping and SLAM applications. Our method does not explain an image by many small local features (e.g. bag-of-SIFT-features) as most previous methods do. Instead, the proposed bag-of-bounding-boxes (BoBB) approach attempts to explain an image by fewer larger object patterns, which leads to a semantic and compact image descriptor. To make the view retrieval system more practical and autonomous, we do not require pre-trained object detector, but propose a novel technique for unsupervised object discovery, which is based on common pattern discovery (CPD) between the input and a known reference images. Moreover, our CPD subtask does not rely on good image segmentation techniques and is able to handle scale variations, exploiting state-of-the-art CPD techniques. Following traditional bounding box -based object annotation and knowledge transfer, we compactly describe an image in a form of bag-of-bounding-boxes (BoBB). With a slightly modified inverted file system, we efficiently index/search the BoBB descriptors. Experiments with publicly available “RobotCar” dataset show that the proposed method achieves accurate object-level view image retrieval with significantly compact image descriptors, e.g. 20 words per image.
Keywords :
Dictionaries; Feature extraction; Image retrieval; Indexes; Robots; Visualization; bag-of-words; common pattern discovery; mobile robot; view image retrieval;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
SICE Annual Conference (SICE), 2013 Proceedings of
Conference_Location :
Nagoya, Japan
Type :
conf
Filename :
6736357
Link To Document :
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