Skip to content

Supervised Multi-class Image Retargeting Reconstruction Model based on Long-range Attention Map

Notifications You must be signed in to change notification settings

cuijia1247/smartIR

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

17 Commits
 
 
 
 
 
 

Repository files navigation

SmartIR

Supervised Multi-class Image Retargeting Reconstruction Model based on Long-range Attention Map

The dataset includes 2135 images in seven different themes: ‘animal’, ‘building’, ‘cars’, ‘flower’, ‘indoor’, ‘landscape’ and ‘people’. All images are selected from existing CV datasets, such as COCO, Stanford Cars, the Oxford Buildings and so on. The image selection criteria are image contents, composition, illumination, and background, which are directly related to the challenges of retargeting techniques, and all the images are indexed based on these criteria.

animal images

animal structure

building images

building structure

For each image included in the proposed SMART dataset, two designers are invited to independently retarget the image from the original size of 640480 to the desired size of 320480 based on their aesthetic preferences. There are no additional rules for designers to minimize the image size, but the preservation of key information and visually pleasing effects is essential. Subsequently, the results of the two designers results are evaluated by a third designer to select the better one as the ground truth for image retargeting. More than 70% of images retargeted by both designers display a high degree of consistency, indicating a stable design aesthetic. For the remaining less than 30%, the third designer is required to make decisions according to the standard of preservation of image information.

The whole SMART dataset will be released when our paper is publishable.

The codes will be updated later.

About

Supervised Multi-class Image Retargeting Reconstruction Model based on Long-range Attention Map

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published