Kim Hyun-Woo, Cho Myungjin, Lee Min-Chul
Department of Computer Science and Networks, Kyushu Institute of Technology, 680-4 Kawazu, Iizuka-shi, Fukuoka 820-8502, Japan.
School of ICT, Robotics, and Mechanical Engineering, Hankyong National University, Institute of Information and Telecommunication Convergence, 327 Chungang-ro, Anseong 17579, Kyonggi-do, Republic of Korea.
Biomimetics (Basel). 2023 Nov 22;8(8):563. doi: 10.3390/biomimetics8080563.
Recently, research on disease diagnosis using red blood cells (RBCs) has been active due to the advantage that it is possible to diagnose many diseases with a drop of blood in a short time. Representatively, there are disease diagnosis technologies that utilize deep learning techniques and digital holographic microscope (DHM) techniques. However, three-dimensional (3D) profile obtained by DHM has a problem of random noise caused by the overlapping DC spectrum and sideband in the Fourier domain, which has the probability of misjudging diseases in deep learning technology. To reduce random noise and obtain a more accurate 3D profile, in this paper, we propose a novel image processing method which randomly selects the center of the high-frequency sideband (RaCoHS) in the Fourier domain. This proposed algorithm has the advantage of filtering while using only recorded hologram information to maintain high-frequency information. We compared and analyzed the conventional filtering method and the general image processing method to verify the effectiveness of the proposed method. In addition, the proposed image processing algorithm can be applied to all digital holography technologies including DHM, and in particular, it is expected to have a great effect on the accuracy of disease diagnosis technologies using DHM.
最近,由于能够在短时间内通过一滴血诊断多种疾病的优势,利用红细胞(RBC)进行疾病诊断的研究十分活跃。具有代表性的是,有利用深度学习技术和数字全息显微镜(DHM)技术的疾病诊断技术。然而,通过DHM获得的三维(3D)轮廓存在傅里叶域中直流频谱和边带重叠引起的随机噪声问题,这在深度学习技术中有误判疾病的可能性。为了减少随机噪声并获得更准确的3D轮廓,本文提出了一种新颖的图像处理方法,该方法在傅里叶域中随机选择高频边带的中心(RaCoHS)。该算法的优点是仅使用记录的全息图信息进行滤波,同时保持高频信息。我们对传统滤波方法和一般图像处理方法进行了比较和分析,以验证所提方法的有效性。此外,所提出的图像处理算法可应用于包括DHM在内的所有数字全息技术,特别是有望对使用DHM的疾病诊断技术的准确性产生重大影响。