Author Affiliations
Abstract
Key Laboratory of Biomedical Engineering of Hainan Province, School of Biomedical Engineering, Hainan University, Haikou 570228, P. R. China

In ophthalmology, retinal optical coherence tomography (OCT) images with noticeable structural features help identify human eyes as healthy or diseased. The recently hot artificial intelligence (AI) realized this recognition process automatically. However, speckle noise in the original retinal OCT image reduces the accuracy of disease classification. This study presents a time-saving approach based on deep learning to improve classification accuracy by removing the noise from the original dataset. Firstly, four pre-trained convolutional neural networks (CNNs) from the ImageNet Large Scale Visual Recognition Challenge (ILSVRC) were trained to classify the original images into two categories: The noise reduction required (NRR) and the noise-free (NF) images. Among the CNNs, VGG19_BN performed best with 98% accuracy and 99% recall. Then, we used the block-matching and 3D filtering (BM3D) algorithm to denoise the NRR images. Those noise-removed NRR and the NF images form the processed dataset. The quality of images in the dataset is prominently ameliorated after denoising, which is valid to improve the models’ performance. The original and processed datasets were tested on the four pre-trained CNNs to evaluate the effectiveness of our proposed approach. We have compared the CNNs, and the results show the performance of the CNNs trained with the processed dataset is improved by an average of 2.04%, 5.19%, and 5.10% under overall accuracy (OA), Macro F1-score, and Micro F1-score, respectively. Especially for DenseNet161, the OA is improved to 98.14%. Our proposed method demonstrates its effectiveness in improving classification accuracy and opens a new solution to reduce denoising time-consuming for large datasets.

Optical coherence tomography deep learning retinal disease classification 
Journal of Innovative Optical Health Sciences
2023, 16(6): 2350008
作者单位
摘要
1 华中科技大学材料科学与工程学院,湖北 武汉 430074
2 宁波翔明激光科技有限公司,浙江 宁波 315000
针对船舱内各种复杂空间的作业环境需求,利用激光清洗技术对船用钢材EH36表面的漆层、锈蚀、油污开展工艺试验研究。首先研究激光功率、重复频率、脉冲宽度工艺参数组合对表面形貌的影响,揭示不同参数对表面剥离程度与粗糙度的影响,同时需要避免产生表面裂纹。其次,设计单因素试验获得漆、锈、油污的最佳清洗工艺窗口,漆、油污可以通过一次激光扫描除去,锈蚀需要清洗两次。通过对比清洗前后的基材表面元素含量分布以及微观形貌变化,结果表明,激光清洗后表面污染物有关的元素C、N、O均大幅降低,锈蚀、油污能够被完全去除,而漆层存在少量细小片状残留。最后对清洗后的基材进行了力学性能测试,发现表层硬度有所提升,除锈样提升约20 HV,除油样提升约3 HV,除漆样提升约13 HV;激光清洗对基材的抗拉、弯曲性能没有明显影响。因此,船用钢的激光清洗过程是可靠且无损的。
激光清洗技术 绿色造船 船舶清洗 无损工艺 laser cleaning technology green shipbuilding ship cleaning harmless technology 
应用激光
2022, 42(5): 168

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