School of Computer Science and Engineering, Vellore Institute of Technology, Vellore 632014, India.
Department of Computer Science and Engineering, Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Chennai 600062, India.
Sensors (Basel). 2023 Jan 19;23(3):1167. doi: 10.3390/s23031167.
Rapid improvements in ultrasound imaging technology have made it much more useful for screening and diagnosing breast problems. Local-speckle-noise destruction in ultrasound breast images may impair image quality and impact observation and diagnosis. It is crucial to remove localized noise from images. In the article, we have used the hybrid deep learning technique to remove local speckle noise from breast ultrasound images. The contrast of ultrasound breast images was first improved using logarithmic and exponential transforms, and then guided filter algorithms were used to enhance the details of the glandular ultrasound breast images. In order to finish the pre-processing of ultrasound breast images and enhance image clarity, spatial high-pass filtering algorithms were used to remove the extreme sharpening. In order to remove local speckle noise without sacrificing the image edges, edge-sensitive terms were eventually added to the Logical-Pool Recurrent Neural Network (LPRNN). The mean square error and false recognition rate both fell below 1.1% at the hundredth training iteration, showing that the LPRNN had been properly trained. Ultrasound images that have had local speckle noise destroyed had signal-to-noise ratios (SNRs) greater than 65 dB, peak SNR ratios larger than 70 dB, edge preservation index values greater than the experimental threshold of 0.48, and quick destruction times. The time required to destroy local speckle noise is low, edge information is preserved, and image features are brought into sharp focus.
超声成像技术的快速发展使其在筛查和诊断乳房问题方面变得更加有用。 局部斑点噪声破坏可能会影响图像质量,影响观察和诊断。 从图像中去除局部噪声至关重要。 在本文中,我们使用混合深度学习技术从乳房超声图像中去除局部斑点噪声。 首先使用对数和指数变换来提高超声乳房图像的对比度,然后使用导向滤波器算法来增强乳腺超声图像的腺体细节。 为了完成超声乳房图像的预处理并提高图像清晰度,使用空间高通滤波算法去除极端锐化。 为了在不牺牲图像边缘的情况下去除局部斑点噪声,最终在逻辑池递归神经网络(LPRNN)中添加了边缘敏感项。 在第 100 次训练迭代时,均方误差和错误识别率均低于 1.1%,表明 LPRNN 已被正确训练。 局部斑点噪声破坏后的超声图像的信噪比(SNR)大于 65 dB,峰值 SNR 比大于 70 dB,边缘保留指数值大于 0.48 的实验阈值,快速破坏时间。 局部斑点噪声破坏所需的时间短,边缘信息得到保留,图像特征变得清晰。