Abstract:For the image retrieval system based on spatial relationship of objects in images,it is hard to automatically recognize objects and their spatial relations correctly. Based on the outputs of object detection algorithms,a triple representation of the spatial relationship in images is proposed. Based on the representation,a method for indexing images,computing similarities and ranking results is proposed. A 2D user-match interface is also developed for users to express their needs in terms of retrieval keywords and spatial relationships,and a prototype is established. The representation is robust against errors of object detection. Incorporating the confidence given by object detection into the triple representation and ranking method,the impact of object detection errors on the performance of image retrieval is reduced. With the queries comprising explicit spatial relationship,the proposed approach gives more accurate results in experiments. It performs better than the existing systems in terms of NDCG@m,MAP and F@m.
杨同峰,马军. 图像中物体空间关系的表示及在检索中的应用[J]. 模式识别与人工智能, 2013, 26(1): 70-75.
YANG Tong-Feng,MA Jun. Spatial Relationship Representation of Objects in Images and Its Application to Image Retrieval. , 2013, 26(1): 70-75.
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