Comparative study on super resolution techniques for upper gastrointestinal endoscopic images

Long-Thuy Nguyen, Danh H. Vu, Ngoc Cuong Vu, V. Dao, Thanh-Hai Tran
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Abstract

Endoscopy is considered the gold standard for diagnosis of gastrointestinal diseases. Image quality is an important creteria for a better accurate prediction of the diseases. Actually, in many current health facilities in developing countries as Vietnam, due to the endoscope limitation and environmental impacts, endoscopic images are of very low resolution. As a result, some textures and colors in lesion regions of the image could be ignored. This paper investigates different techniques for enchancement of image resolution. Spefically, we implement fundamental interpolation methods such as Nearest Neighbor Interpolation (NNI), Bilinear Interpolation (BLI) and Bicubic Interpolation (BCI) and advanced methods using deep learning such as Efficient Supixel Convolution Neuron Network (ESPCN), Residual Dense Network (RDN) and Super Resolution Dense Network All (SRDenseNet All). We then compare the performance of these techninques according to SSIM, PSNR and framerate metrics. The experimental results on dataset of upper gastrointestinal endoscopic images show that deep learning super-resolution method (RDN) provides the highest efficiency. This method produces sharper images, some of them look more intuitive and provide more information to doctors that can improve their diagnosis and treatment.
上消化道内镜超分辨率成像技术的比较研究
内窥镜检查被认为是诊断胃肠道疾病的金标准。图像质量是更好准确预测疾病的重要标准。实际上,在越南等发展中国家的许多现有卫生设施中,由于内窥镜的限制和环境影响,内窥镜图像的分辨率非常低。因此,图像病变区域的一些纹理和颜色可以被忽略。本文研究了增强图像分辨率的不同技术。具体来说,我们实现了最近邻插值(NNI)、双线性插值(BLI)和双三次插值(BCI)等基本插值方法,以及使用深度学习的高级方法,如高效Supixel卷积神经元网络(ESPCN)、残差密集网络(RDN)和超分辨率密集网络(SRDenseNet All)。然后,我们根据SSIM、PSNR和帧率指标比较这些技术的性能。在上消化道内镜图像数据集上的实验结果表明,深度学习超分辨率方法(RDN)的效率最高。这种方法产生了更清晰的图像,其中一些看起来更直观,并为医生提供了更多信息,可以改善他们的诊断和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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