Denoised Non-Local Means with BDDU-Net Architecture for Robust Retinal Blood Vessel Segmentation

Author:

Desiani Anita1ORCID,Erwin 2ORCID,Suprihatin Bambang1ORCID,Riana Dwiza3ORCID,Arhami Muhammad4ORCID,Ramayanti Indri5ORCID,Utama Yadi6ORCID

Affiliation:

1. Mathematics Department, Mathematics and Natural Science Faculty, Universitas Sriwijaya, Inderalaya, 30862, South Sumatera, Indonesia

2. Informatics Engineering Department, Computer Science Faculty, Universitas Sriwijaya, Inderalaya, 30862, South Sumatera, Indonesia

3. Computer Science Department, Information Technology Faculty, Universitas Nusa Mandiri, Jakarta Pusat, 10450, Jakarta, Indonesia

4. Informatics Engineering Department, Politeknik Lhokseumawe, Lhoksuemawe, 24301, Aceh, Indonesia

5. Parasitology Department, Medicine Faculty, Universitas Muhammadiyah, Palembang, 30116, South Sumatera, Indonesia

6. Information System Department, Computer Science Faculty, Universitas Sriwijaya, Inderalaya, 30862, South Sumatera, Indonesia

Abstract

Retinal blood vessels can be obtained by image segmentation. This study proposes combining image enhancement and segmentation to obtain retinal blood vessels. The image enhancement stages use CLAHE and Denoised Non-Local Means to increase contrast and reduce noise on the original image, and Bottom-Hat (BTH) filtering is used to lighten dark features in the image so the features become lighter and darken the bright features in the image. Bottom Hat is applied to make the features of the blood vessels in the retinal image more visible. The segmentation architecture proposes BDDU-Net architecture which combines U-Net in the encoder part, DenseNet in the bridge part, and Bi-ConvLSTM in the decoder part. Image enhancement performance results are PSNR and SSIM. The PSNR is more than 40 dB on both the DRIVE and STARE datasets. The SSIM results are close to 1 on the DRIVE and STARE datasets. These results show that the image enhancement stages in the proposed method can enhance the quality of the original image. The segmentation performance results of BDDU-Net architecture are measured based on accuracy, sensitivity, specificity, IoU, and F1-Score. The DRIVE dataset obtained 95.578% for accuracy, 85.75% for sensitivity, 96.75% for specificity, 67.407% for IoU, and 80.53% for F1-Score. The STARE dataset obtained 97.63% for accuracy, 84.33% for sensitivity, 98.66% for specificity, 75.67% for IoU, and 86.15% for F1-Score. Based on the image enhancement and image segmentation results, these results show that the proposed method is great for enhancing image quality and excellent for blood vessel segmentation in retinal images, although IoU results on the DRIVE dataset need to be improved.

Publisher

World Scientific Pub Co Pte Ltd

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Software

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