Improvement of the Performance of Scattering Suppression and Absorbing Structure Depth Estimation on Transillumination Image by Deep Learning

IF 2.5 4区 综合性期刊 Q2 CHEMISTRY, MULTIDISCIPLINARY Applied Sciences-Basel Pub Date : 2023-09-06 DOI:10.3390/app131810047
Ngoc An Dang Nguyen, Hoang Nhut Huynh, Trung Nghia Tran
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引用次数: 1

Abstract

The development of optical sensors, especially with regard to the improved resolution of cameras, has made optical techniques more applicable in medicine and live animal research. Research efforts focus on image signal acquisition, scattering de-blur for acquired images, and the development of image reconstruction algorithms. Rapidly evolving artificial intelligence has enabled the development of techniques for de-blurring and estimating the depth of light-absorbing structures in biological tissues. Although the feasibility of applying deep learning to overcome these problems has been demonstrated in previous studies, limitations still exist in terms of de-blurring capabilities on complex structures and the heterogeneity of turbid medium, as well as the limit of accurate estimation of the depth of absorptive structures in biological tissues (shallower than 15.0 mm). These problems are related to the absorption structure’s complexity, the biological tissue’s heterogeneity, the training data, and the neural network model itself. This study thoroughly explores how to generate training and testing datasets on different deep learning models to find the model with the best performance. The results of the de-blurred image show that the Attention Res-UNet model has the best de-blurring ability, with a correlation of more than 89% between the de-blurred image and the original structure image. This result comes from adding the Attention gate and the Residual block to the common U-net model structure. The results of the depth estimation show that the DenseNet169 model shows the ability to estimate depth with high accuracy beyond the limit of 20.0 mm. The results of this study once again confirm the feasibility of applying deep learning in transmission image processing to reconstruct clear images and obtain information on the absorbing structure inside biological tissue. This allows the development of subsequent transillumination imaging studies in biological tissues with greater heterogeneity and structural complexity.
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深度学习提高透射图像散射抑制和吸收结构深度估计性能
光学传感器的发展,特别是在提高相机分辨率方面,使光学技术更适用于医学和活体动物研究。研究工作集中在图像信号采集、采集图像的散射去模糊以及图像重建算法的开发上。快速发展的人工智能使生物组织中光吸收结构的去模糊和深度估计技术得以发展。尽管在之前的研究中已经证明了应用深度学习来克服这些问题的可行性,但在复杂结构的去模糊能力和混浊介质的异质性方面,以及在生物组织中吸收结构深度(浅于15.0 mm)的准确估计方面,仍然存在局限性。这些问题与吸收结构的复杂性、生物组织的异质性、训练数据和神经网络模型本身有关。本研究深入探讨了如何在不同的深度学习模型上生成训练和测试数据集,以找到性能最佳的模型。去模糊图像的结果表明,Attention Res UNet模型具有最好的去模糊能力,去模糊图像与原始结构图像之间的相关性超过89%。这一结果来自于在通用U-net模型结构中添加注意门和残差块。深度估计结果表明,DenseNet169模型能够以超过20.0 mm的高精度估计深度。该研究结果再次证实了将深度学习应用于透射图像处理以重建清晰图像并获得生物组织内部吸收结构信息的可行性。这允许在具有更大异质性和结构复杂性的生物组织中进行后续的透照成像研究。
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来源期刊
Applied Sciences-Basel
Applied Sciences-Basel CHEMISTRY, MULTIDISCIPLINARYMATERIALS SCIE-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.30
自引率
11.10%
发文量
10882
期刊介绍: Applied Sciences (ISSN 2076-3417) provides an advanced forum on all aspects of applied natural sciences. It publishes reviews, research papers and communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced. Electronic files and software regarding the full details of the calculation or experimental procedure, if unable to be published in a normal way, can be deposited as supplementary electronic material.
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