Neural Network Method for Detecting Blur in Histological Images

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Аннотация

In this paper we consider the problem of detecting blurred regions in high-resolution full-slide histologic images. The proposed method is based on the use of a Fourier neural operator trained on the results of two simultaneously used approaches: blur detection using multiscale analysis of the discrete cosine transform coefficients and estimation of the degree of sharpness of objects edges in the image. The efficiency of the algorithm is confirmed on images from the datasets PATH-DT-MSU [1] and FocusPath [2].

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Авторлар туралы

G. Nazarenko

Lomonosov Moscow State University

Хат алмасуға жауапты Автор.
Email: s02190303@gse.cs.msu.ru
Ресей, Moscow

A. Krylov

Lomonosov Moscow State University

Email: kryl@cs.msu.ru
Ресей, Moscow

Әдебиет тізімі

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1. JATS XML
2. Fig. 1. Graph of the absolute values of DDC coefficients sorted in ascending order for blurred and clear fragments of histological images

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3. Fig. 2. Illustration of DDC coefficients for a block when they are divided into groups of correspondence to different frequencies

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4. Fig. 3. Visualisation of the blur map for the histological image with blurred areas marked in red

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5. Fig. 4. Graph of SI(V) threshold values

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6. Fig. 5. General algorithm of the classical method

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7. Fig. 6. Architecture of the neural Fourier operator

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8. Fig. 7. Visualisation of blur detections

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© Russian Academy of Sciences, 2024