Multi-Resolution Feature Embedded Level Set Model for Crosshatched Texture Segmentation

IF 0.8 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC International Journal of Electrical and Computer Engineering Systems Pub Date : 2023-04-26 DOI:10.32985/ijeces.14.4.1
P. K., Sadyojatha K.M.
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Abstract

In image processing applications, texture is the most important element utilized by human visual systems for distinguishing dissimilar objects in a scene. In this research article, a variational model based on the level set is implemented for crosshatched texture segmentation. In this study, the proposed model’s performance is validated on the Brodatz texture dataset. The cross-hatched texture segmentation in the lower resolution texture images is difficult, due to the computational and memory requirements. The aforementioned issue has been resolved by implementing a variational model based on the level set that enables efficient segmentation in both low and high-resolution images with automatic selection of the filter size. In the proposed model, the multi-resolution feature obtained from the frequency domain filters enhances the dissimilarity between the regions of crosshatched textures that have low-intensity variations. Then, the resultant images are integrated with a level set-based active contour model that addresses the segmentation of crosshatched texture images. The noise added during the segmentation process is eliminated by morphological processing. The experiments conducted on the Brodatz texture dataset demonstrated the effectiveness of the proposed model, and the obtained results are validated in terms of Intersection over the Union (IoU) index, accuracy, precision, f1-score and recall. The extensive experimental investigation shows that the proposed model effectively segments the region of interest in close correspondence with the original image. The proposed segmentation model with a multi-support vector machine has achieved a classification accuracy of 99.82%, which is superior to the comparative model (modified convolutional neural network with whale optimization algorithm). The proposed model almost showed a 0.11% improvement in classification accuracy related to the existing model.
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用于交叉阴影纹理分割的多分辨率特征嵌入水平集模型
在图像处理应用中,纹理是人类视觉系统用来区分场景中不同物体的最重要的元素。本文提出了一种基于水平集的变分模型,用于交叉纹理分割。在本研究中,在Brodatz纹理数据集上验证了该模型的性能。由于对计算量和内存的要求,在低分辨率纹理图像中进行交叉孵化纹理分割是很困难的。通过实现基于水平集的变分模型,上述问题已经得到解决,该模型可以在低分辨率和高分辨率图像中进行有效分割,并自动选择过滤器大小。在该模型中,由频域滤波器获得的多分辨率特征增强了具有低强度变化的交叉纹理区域之间的不相似性。然后,将生成的图像与基于水平集的活动轮廓模型集成,该模型解决了交叉纹理图像的分割问题。通过形态学处理消除分割过程中增加的噪声。在Brodatz纹理数据集上进行的实验验证了该模型的有效性,并从IoU (Intersection over The Union)指数、准确率、精密度、f1-score和召回率等方面对所得结果进行了验证。大量的实验研究表明,该模型可以有效地分割出与原始图像密切对应的感兴趣区域。本文提出的多支持向量机分割模型的分类准确率达到99.82%,优于对比模型(带有鲸鱼优化算法的改进卷积神经网络)。与现有模型相比,该模型的分类精度提高了0.11%。
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来源期刊
CiteScore
1.20
自引率
11.80%
发文量
69
期刊介绍: The International Journal of Electrical and Computer Engineering Systems publishes original research in the form of full papers, case studies, reviews and surveys. It covers theory and application of electrical and computer engineering, synergy of computer systems and computational methods with electrical and electronic systems, as well as interdisciplinary research. Power systems Renewable electricity production Power electronics Electrical drives Industrial electronics Communication systems Advanced modulation techniques RFID devices and systems Signal and data processing Image processing Multimedia systems Microelectronics Instrumentation and measurement Control systems Robotics Modeling and simulation Modern computer architectures Computer networks Embedded systems High-performance computing Engineering education Parallel and distributed computer systems Human-computer systems Intelligent systems Multi-agent and holonic systems Real-time systems Software engineering Internet and web applications and systems Applications of computer systems in engineering and related disciplines Mathematical models of engineering systems Engineering management.
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