Javascript must be enabled to continue!
A New Automatic Watercolour Painting Algorithm Based on Dual Stream Image Segmentation Model with Colour Space Estimation
View through CrossRef
Image processing plays a crucial role in automatic watercolor painting by manipulating the digital image to achieve the desired watercolor effect. segmentation in automatic watercolor painting algorithms is essential for region-based processing, color mixing and blending, capturing brushwork and texture, and providing artistic control over the final result. It allows for more realistic and expressive watercolor-like paintings by processing different image regions individually and applying appropriate effects to each segment. Hence, this paper proposed an effective Dual Stream Exception Maximization (DSEM) for automatic image segmentation. DSEM combines both color and texture information to segment an image into meaningful regions. This approach begins by converting the image from the RGB color space to a perceptually-based color space, such as CIELAB, to account for variations in lighting conditions and human perception of color. With the color space conversion, DSEM extracts relevant features from the image. Color features are computed based on the values of the color channels in the chosen color space, capturing the nuances of color distribution within the image. Simultaneously, texture features are derived by computing statistical measures such as local variance or co-occurrence matrices, capturing the textural characteristics of the image. Finally, the model is applied over the deep learning model for the classification of the color space in the painting. Simulation analysis is performed compared with conventional segmentation techniques such a CNN and RNN. The comparative analysis states that the proposed DSEM exhibits superior performance compared to conventional techniques in terms of color space estimation, texture analysis and region merging. The performance of classification with DSEM is ~12% higher than the conventional techniques.
Auricle Technologies, Pvt., Ltd.
Title: A New Automatic Watercolour Painting Algorithm Based on Dual Stream Image Segmentation Model with Colour Space Estimation
Description:
Image processing plays a crucial role in automatic watercolor painting by manipulating the digital image to achieve the desired watercolor effect.
segmentation in automatic watercolor painting algorithms is essential for region-based processing, color mixing and blending, capturing brushwork and texture, and providing artistic control over the final result.
It allows for more realistic and expressive watercolor-like paintings by processing different image regions individually and applying appropriate effects to each segment.
Hence, this paper proposed an effective Dual Stream Exception Maximization (DSEM) for automatic image segmentation.
DSEM combines both color and texture information to segment an image into meaningful regions.
This approach begins by converting the image from the RGB color space to a perceptually-based color space, such as CIELAB, to account for variations in lighting conditions and human perception of color.
With the color space conversion, DSEM extracts relevant features from the image.
Color features are computed based on the values of the color channels in the chosen color space, capturing the nuances of color distribution within the image.
Simultaneously, texture features are derived by computing statistical measures such as local variance or co-occurrence matrices, capturing the textural characteristics of the image.
Finally, the model is applied over the deep learning model for the classification of the color space in the painting.
Simulation analysis is performed compared with conventional segmentation techniques such a CNN and RNN.
The comparative analysis states that the proposed DSEM exhibits superior performance compared to conventional techniques in terms of color space estimation, texture analysis and region merging.
The performance of classification with DSEM is ~12% higher than the conventional techniques.
Related Results
Investigate the Impact of the Current Watercolour Painting Market Situation on the Development of the Watercolour Painting Market in China. Market Environment as a Mediator
Investigate the Impact of the Current Watercolour Painting Market Situation on the Development of the Watercolour Painting Market in China. Market Environment as a Mediator
Purpose: The purpose of this study is to investigate the impact of the current watercolour painting market situation in China on the development of the watercolour painting market ...
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...
AI‐enabled precise brain tumor segmentation by integrating Refinenet and contour‐constrained features in MRI images
AI‐enabled precise brain tumor segmentation by integrating Refinenet and contour‐constrained features in MRI images
AbstractBackgroundMedical image segmentation is a fundamental task in medical image analysis and has been widely applied in multiple medical fields. The latest transformer‐based de...
Interobserver Agreement in Automatic Segmentation Annotation of Prostate Magnetic Resonance Imaging
Interobserver Agreement in Automatic Segmentation Annotation of Prostate Magnetic Resonance Imaging
We aimed to compare the performance and interobserver agreement of radiologists manually segmenting images or those assisted by automatic segmentation. We further aimed to reduce i...
The Blue Beret
The Blue Beret
When we think of United Nations (UN) peacekeepers, the first image that is conjured in our mind is of an individual sporting a blue helmet or a blue beret (fig. 1). While simple an...
Multiple surface segmentation using novel deep learning and graph based methods
Multiple surface segmentation using novel deep learning and graph based methods
<p>The task of automatically segmenting 3-D surfaces representing object boundaries is important in quantitative analysis of volumetric images, which plays a vital role in nu...
Review on 2D and 3D MRI Image Segmentation Techniques
Review on 2D and 3D MRI Image Segmentation Techniques
Background:
Magnetic Resonance Imaging is most widely used for early diagnosis
of abnormalities in human organs. Due to the technical advancement in digital image processing,
auto...
Evaluation of automatic pericardial segmentation methods in computed tomography images
Evaluation of automatic pericardial segmentation methods in computed tomography images
Abstract
Funding Acknowledgements
Type of funding sources: Public grant(s) – National budget only. Main funding source(s): Funda...

