Title :
Interactive Remote-Sensing Image Retrieval Using Active Relevance Feedback
Author :
Ferecatu, Marin ; Boujemaa, Nozha
Author_Institution :
IMEDIA Res. Group, INRIA, Le Chesnay
fDate :
4/1/2007 12:00:00 AM
Abstract :
As the resolution of remote-sensing imagery increases, the full complexity of the scenes becomes increasingly difficult to approach. User-defined classes in large image databases are often composed of several groups of images and span very different scales in the space of low-level visual descriptors. The interactive retrieval of such image classes is then very difficult. To address this challenge, we evaluate here, in the context of satellite image retrieval, two general improvements for relevance feedback using support vector machines (SVMs). First, to optimize the transfer of information between the user and the system, we focus on the criterion employed by the system for selecting the images presented to the user at every feedback round. We put forward an active-learning selection criterion that minimizes redundancy between the candidate images shown to the user. Second, for image classes spanning very different scales in the low-level description space, we find that a high sensitivity of the SVM to the scale of the data brings about a low retrieval performance. We argue that the insensitivity to scale is desirable in this context, and we show how to obtain it by the use of specific kernel functions. Experimental evaluation of both ranking and classification performance on a ground-truth database of satellite images confirms the effectiveness of our approach
Keywords :
image retrieval; relevance feedback; remote sensing; support vector machines; active relevance feedback; active-learning selection criterion; image databases; interactive remote-sensing image retrieval; kernel functions; remote-sensing imagery; satellite image retrieval; support vector machines; Feedback; Image databases; Image resolution; Image retrieval; Information retrieval; Layout; Remote sensing; Satellites; Support vector machine classification; Support vector machines; Active learning; image retrieval; kernel function; reduction of redundancy; sample selection;
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2007.892007