Relevance maximizing, iteration minimizing, relevance-feedback, content-based image retrieval (CBIR)
First Claim
1. One or more computer-readable media having computer-executable instructions that, when executed by a computer, perform a method for improving iterative results of Content-Based Image Retrieval (CBIR) using relevance feedback, the method comprising:
- obtaining a set of positive feedback images and a set of negative feedback images via relevance feedback, the set of positive feedback images are those images deemed semantically relevant and the set of negative feedback images are those deemed semantically less relevant;
constructing a Bayesian classifier of a positive feedback image by positive candidate images;
within a feature space, moving a positive candidate image towards the set of positive feedback images by adjusting distance metrics of the positive candidate image, the positive candidate image having similar low-level features as those of the set of positive feedback images, wherein the adjusting of distance metrics of the positive candidate image employs this evaluation;
where j is the positive candidate image;
NR is a number of images in the set of positive feedback images;
Xi+, i=1, . . . , NR is defined as the ith image;
wi is the normalized weight of the images in the set of positive feedback images;
within a feature space, distancing a negative candidate image from the set of positive feedback images by adjusting distance metrics of the negative candidate image, the negative candidate image having similar low-level features as those of the set of negative feedback images.
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Abstract
An implementation of a technology, described herein, for relevance-feedback, content-based facilitating accurate and efficient image retrieval minimizes the number of iterations for user feedback regarding the semantic relevance of exemplary images while maximizing the resulting relevance of each iteration. One technique for accomplishing this is to use a Bayesian classifier to treat positive and negative feedback examples with different strategies. In addition, query refinement techniques are applied to pinpoint the users'"'"' intended queries with respect to their feedbacks. These techniques further enhance the accuracy and usability of relevance feedback. This abstract itself is not intended to limit the scope of this patent. The scope of the present invention is pointed out in the appending claims.
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Citations
8 Claims
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1. One or more computer-readable media having computer-executable instructions that, when executed by a computer, perform a method for improving iterative results of Content-Based Image Retrieval (CBIR) using relevance feedback, the method comprising:
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obtaining a set of positive feedback images and a set of negative feedback images via relevance feedback, the set of positive feedback images are those images deemed semantically relevant and the set of negative feedback images are those deemed semantically less relevant;
constructing a Bayesian classifier of a positive feedback image by positive candidate images;
within a feature space, moving a positive candidate image towards the set of positive feedback images by adjusting distance metrics of the positive candidate image, the positive candidate image having similar low-level features as those of the set of positive feedback images, wherein the adjusting of distance metrics of the positive candidate image employs this evaluation;
where j is the positive candidate image;
NR is a number of images in the set of positive feedback images;
Xi+, i=1, . . . , NR is defined as the ith image;
wi is the normalized weight of the images in the set of positive feedback images;
within a feature space, distancing a negative candidate image from the set of positive feedback images by adjusting distance metrics of the negative candidate image, the negative candidate image having similar low-level features as those of the set of negative feedback images. - View Dependent Claims (2, 3)
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4. One or more computer-readable media having computer-executable instructions that, when executed by a computer, perform a method for improving the evaluation of the similarity of images based upon image features, the method comprising defining a subject image to be similar to a set of example images because it is within a minimal distance of the set of example images within a feature space, wherein the distance between the subject image and the set of example images is calculated based upon this evaluation:
where j is the subject image;
NR is a number of images in the set of example images;
Xi+, i=1, . . . , NR is defined as the ith image;
wi is the normalized weight of the images in the set of example images;
repeating the defining for each example image in a set of example images and for each subject image in a set of subject images. - View Dependent Claims (5)
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6. A system for improving iterative results of Content-Based Image Retrieval (CBIR) using relevance feedback, the system comprising:
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a relevance feedback means for obtaining a set of positive feedback images and a set of negative feedback images via relevance feedback, the set of positive feedback images are those images deemed semantically relevant and the set of negative feedback images are those deemed semantically less relevant;
a feedback analyzing means for performing functions within a feature space, the functions comprising;
moving a positive candidate image towards the set of positive feedback images by adjusting distance metrics of the positive candidate image, the positive candidate image having similar low-level features as those of the set of positive feedback images, wherein the adjusting of distance metrics of the positive candidate image employs this evaluation;
where j is the positive candidate image;
NR is a number of images in the set of positive feedback images;
Xi+, i=1, . . . , NR is defined as the ith image;
wi is the normalized weight of the images in the set of positive feedback images;
distancing a negative candidate image from the set of positive feedback images by adjusting distance metrics of the negative candidate image, the negative candidate image having similar low-level features as those of the set of negative feedback images. - View Dependent Claims (7, 8)
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Specification