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

Deep Superpixel-Based Network For Blind Image Quality Assessment

View through CrossRef
Abstract The goal in a blind image quality assessment (BIQA) method is to simulate the process of evaluating images by human eyes and accurately assess the quality of the image. Although many methods effectively identify degradation, they do not fully consider the semantic content in images resulting in distortion. In order to fill this gap, we propose a deep adaptive superpixel-based network, namely DSN-IQA, to assess the quality of image based on multi-scale and superpixel segmentation. The DSN-IQA can adaptively accept arbitrary scale images as input images, making the assessment process similar to human perception. The network uses two models to extract multi-scale semantic features and generate a superpixel adjacency map. These two elements are united together via feature fusion to accurately predict image quality. Experimental results on different benchmark databases demonstrate that our method is highly competitive with other methods when assessing challenging authentic image databases. Also, due to adaptive deep superpixel-based network, our method accurately assesses images with complicated distortion, much like the human eye.
Springer Science and Business Media LLC
Title: Deep Superpixel-Based Network For Blind Image Quality Assessment
Description:
Abstract The goal in a blind image quality assessment (BIQA) method is to simulate the process of evaluating images by human eyes and accurately assess the quality of the image.
Although many methods effectively identify degradation, they do not fully consider the semantic content in images resulting in distortion.
In order to fill this gap, we propose a deep adaptive superpixel-based network, namely DSN-IQA, to assess the quality of image based on multi-scale and superpixel segmentation.
The DSN-IQA can adaptively accept arbitrary scale images as input images, making the assessment process similar to human perception.
The network uses two models to extract multi-scale semantic features and generate a superpixel adjacency map.
These two elements are united together via feature fusion to accurately predict image quality.
Experimental results on different benchmark databases demonstrate that our method is highly competitive with other methods when assessing challenging authentic image databases.
Also, due to adaptive deep superpixel-based network, our method accurately assesses images with complicated distortion, much like the human eye.

Related Results

A Weakly Supervised Semantic Segmentation Method based on Local Superpixel Transformation
A Weakly Supervised Semantic Segmentation Method based on Local Superpixel Transformation
Abstract Weakly supervised semantic segmentation (WSSS) can obtain pseudo-semantic masks through a weaker level of supervised labels, reducing the need for costly pixel-lev...
ConvNeXt with Context-Weighted Deep Superpixels for High-Spatial-Resolution Aerial Image Semantic Segmentation
ConvNeXt with Context-Weighted Deep Superpixels for High-Spatial-Resolution Aerial Image Semantic Segmentation
Semantic segmentation of high-spatial-resolution (HSR) aerial imagery is critical for applications such as urban planning and environmental monitoring, yet challenges, including sc...
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...
The design of an improved intelligent guide stick for the blind
The design of an improved intelligent guide stick for the blind
Abstract There are about 17 million blind people in China, which means that one out of every 80 people is blind. However, due to the lack of facilities and policies ...
Superpixel-Based Mixed Noise Estimation for Hyperspectral Images Using Multiple Linear Regression
Superpixel-Based Mixed Noise Estimation for Hyperspectral Images Using Multiple Linear Regression
HSIs (hyperspectral images) obtained by new-generation hyperspectral sensors contain both electronic noise and photon noise with comparable power. Therefore, both the SI (signal-in...
Blind image quality assessment via semi-supervised learning and fuzzy inference
Blind image quality assessment via semi-supervised learning and fuzzy inference
AbstractBlind image quality assessment(BIQA) is a challenging task due to the difficulties in extracting quality-aware features and modeling the relationship between the image feat...
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...
Dynamic-budget superpixel active learning for semantic segmentation
Dynamic-budget superpixel active learning for semantic segmentation
IntroductionActive learning can significantly decrease the labeling cost of deep learning workflows by prioritizing the limited labeling budget to high-impact data points that have...

Back to Top