Existing image complexity metrics cannot distinguish meaningful content from noise. This means that white noise images, which contain no meaningful information, are judged as highly complex. We present a new image complexity metric through hierarchical clustering of patches. We use the minimum description length principle to determine the number of clusters and designate certain points as outliers and, hence, correctly assign white noise a low score. The presented method has similarities to theoretical ideas for measuring meaningful complexity. We conduct experiments on seven different sets of images, which show that our method assigns the most accurate scores to all images considered. Additionally, comparing the different levels of the hie...
An image of natural scene may be described in a few words, yet an image of static requires describin...
Visual grouping is a key mechanism in human scene perception. There, it belongs to the subconscious,...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
We propose a complexity measure for black-and-white (B/W) digital images, based on the detection of ...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
The need for the ability to cluster unknown data to better understand its relationship to know data ...
We propose a complexity measure for black-and-white (B/W) digital images, based on the detection of ...
The aim of this work is to study image complexity perception of real images. We conducted psycho-phy...
[[abstract]]Many validity measures have been proposed for evaluating clustering results. Most of the...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
It is apparent that humans are intrinsically capable of determining the degree of complexity present...
Image segmentation attempts to classify the pixels of a digital image into multiple groups to facili...
The aim of this work is to predict the complexity perception of real world images.We propose a new c...
International audienceWe present a method for estimating the complexity of an image based on Bennett...
An image of natural scene may be described in a few words, yet an image of static requires describin...
Visual grouping is a key mechanism in human scene perception. There, it belongs to the subconscious,...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
We propose a complexity measure for black-and-white (B/W) digital images, based on the detection of ...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
The need for the ability to cluster unknown data to better understand its relationship to know data ...
We propose a complexity measure for black-and-white (B/W) digital images, based on the detection of ...
The aim of this work is to study image complexity perception of real images. We conducted psycho-phy...
[[abstract]]Many validity measures have been proposed for evaluating clustering results. Most of the...
Existing clustering algorithms have difficulty finding the correct locations of potential clusters i...
It is apparent that humans are intrinsically capable of determining the degree of complexity present...
Image segmentation attempts to classify the pixels of a digital image into multiple groups to facili...
The aim of this work is to predict the complexity perception of real world images.We propose a new c...
International audienceWe present a method for estimating the complexity of an image based on Bennett...
An image of natural scene may be described in a few words, yet an image of static requires describin...
Visual grouping is a key mechanism in human scene perception. There, it belongs to the subconscious,...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...