The assessment of how well one image matches another forms a critical component both of models of human visual processing and of many image analysis systems. Two of the most commonly used norms for quantifying image similarity are L1 and L2, which are specific instances of the Minkowski metric. However, there is often not a principled reason for selecting one norm over the other. One way to address this problem is by examining whether one metric, better than the other, captures the perceptual notion of image similarity. This can be used to derive inferences regarding similarity criteria the human visual system uses, as well as to evaluate and design metrics for use in image-analysis applications. With this goal, we examined perceptual prefe...
In this paper we compare to the standard correlation coefficient three estimators of similarity for ...
Perceptual similarity is often formalized as a metric in a multi-dimensional space. Stimuli are poin...
vision.cornell.edu Current similarity-based approaches to interactive fine-grained categorization re...
The image comparison operation ??sessing how well one image matches another ??rms a critical compone...
This paper proposes new objective similarity metrics for scenic bilevel images, which are images con...
This paper has been submitted to IEEE Transaction on Image Processing in May 2015.This paper present...
The creation, storage, manipulation, and transmission of images have become less costly and more eff...
“NOTICE: this is the author’s version of a work that was accepted for publication in Journal of Visu...
In this report we present an image similarity metric for content-based image database search. The si...
This thesis examines the image quality assessment using Structural Similarity Index Metric (SSIM). T...
In this paper our goal is to employ human judgments of image similarity to improve the organization ...
Measuring the similarity of images is a fundamental problem to computer vision for which no universa...
Simple, low-level visual features are extensively used for content-based image retrieval. Our goal w...
Perceptual distances between images, as measured in the space of pre-trained deep features, have out...
The rapid growth of the numbers of images and their users as a result of the reduction in cost and i...
In this paper we compare to the standard correlation coefficient three estimators of similarity for ...
Perceptual similarity is often formalized as a metric in a multi-dimensional space. Stimuli are poin...
vision.cornell.edu Current similarity-based approaches to interactive fine-grained categorization re...
The image comparison operation ??sessing how well one image matches another ??rms a critical compone...
This paper proposes new objective similarity metrics for scenic bilevel images, which are images con...
This paper has been submitted to IEEE Transaction on Image Processing in May 2015.This paper present...
The creation, storage, manipulation, and transmission of images have become less costly and more eff...
“NOTICE: this is the author’s version of a work that was accepted for publication in Journal of Visu...
In this report we present an image similarity metric for content-based image database search. The si...
This thesis examines the image quality assessment using Structural Similarity Index Metric (SSIM). T...
In this paper our goal is to employ human judgments of image similarity to improve the organization ...
Measuring the similarity of images is a fundamental problem to computer vision for which no universa...
Simple, low-level visual features are extensively used for content-based image retrieval. Our goal w...
Perceptual distances between images, as measured in the space of pre-trained deep features, have out...
The rapid growth of the numbers of images and their users as a result of the reduction in cost and i...
In this paper we compare to the standard correlation coefficient three estimators of similarity for ...
Perceptual similarity is often formalized as a metric in a multi-dimensional space. Stimuli are poin...
vision.cornell.edu Current similarity-based approaches to interactive fine-grained categorization re...