Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Fitting‐based optimisation for image visual salient object detection

View through CrossRef
To overcome some major problems with traditional saliency evaluation metrics, full‐reference image quality assessment (IQA) metrics, which have similar but stricter objectives, are used. Inspired by the root mean absolute error, the authors propose a fitting‐based optimisation method for salient object detection algorithms. Their algorithm analyses the quantitative relationship between saliency and ground truth values, and uses the derived relationship to fit the saliency values to the original saliency maps. This ensures that the resulting images, which are composed of fitted values, are closer to the ground truth. The proposed algorithm first computes the statistics of the ground truth and saliency maps computed by each salient object detection algorithm. These statistics are used to compute the parameters of four fitting models, which generally agree with the characteristics of the statistical data. For a new saliency map, they use the fitting model with the computed parameters to obtain the fitted saliency values, which are confined to the range [0, 255]. Finally, they evaluate their saliency optimisation algorithm using traditional evaluation metrics, IQA metrics, and a content‐based image retrieval application. The results show that the proposed approach improves the quality of the optimised saliency maps.
Institution of Engineering and Technology (IET)
Title: Fitting‐based optimisation for image visual salient object detection
Description:
To overcome some major problems with traditional saliency evaluation metrics, full‐reference image quality assessment (IQA) metrics, which have similar but stricter objectives, are used.
Inspired by the root mean absolute error, the authors propose a fitting‐based optimisation method for salient object detection algorithms.
Their algorithm analyses the quantitative relationship between saliency and ground truth values, and uses the derived relationship to fit the saliency values to the original saliency maps.
This ensures that the resulting images, which are composed of fitted values, are closer to the ground truth.
The proposed algorithm first computes the statistics of the ground truth and saliency maps computed by each salient object detection algorithm.
These statistics are used to compute the parameters of four fitting models, which generally agree with the characteristics of the statistical data.
For a new saliency map, they use the fitting model with the computed parameters to obtain the fitted saliency values, which are confined to the range [0, 255].
Finally, they evaluate their saliency optimisation algorithm using traditional evaluation metrics, IQA metrics, and a content‐based image retrieval application.
The results show that the proposed approach improves the quality of the optimised saliency maps.

Related Results

Depth-aware salient object segmentation
Depth-aware salient object segmentation
Object segmentation is an important task which is widely employed in many computer vision applications such as object detection, tracking, recognition, and ret...
Robust design optimization of electrical machines for electric and hybrid vehicles
Robust design optimization of electrical machines for electric and hybrid vehicles
Contribution méthodologique au dimensionnement optimal et robuste des machines électriques dédiées aux chaines de traction VE et VEH Face aux préoccupations croissa...
Double Exposure
Double Exposure
I. Happy Endings Chaplin’s Modern Times features one of the most subtly strange endings in Hollywood history. It concludes with the Tramp (Chaplin) and the Gamin (Paulette Godda...
Salient Region Guided Blind Image Sharpness Assessment
Salient Region Guided Blind Image Sharpness Assessment
Salient regions provide important cues for scene understanding to the human vision system. However, whether the detected salient regions are helpful in image blur estimation is unk...
Deep learning for small object detection in images
Deep learning for small object detection in images
[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT REQUEST OF AUTHOR.] With the rapid development of deep learning in computer vision, especially deep convolutional neural network...
CF‐based optimisation for saliency detection
CF‐based optimisation for saliency detection
In view of the observation that saliency maps generated by saliency detection algorithms usually show similarity imperfection against the ground truth, the authors propose an optim...
Intelligent Image Detection System Based on Internet of Things and Cloud Computing
Intelligent Image Detection System Based on Internet of Things and Cloud Computing
Images are the most intuitive way for humans to perceive and obtain information, and they are one of the most important sources of information. With the development of information ...
Colour image segmentation using perceptual colour difference saliency algorithm
Colour image segmentation using perceptual colour difference saliency algorithm
The topic of colour image segmentation has been and still is a hot issue in areas such as computer vision and image processing because of its wide range of practical applications. ...

Back to Top