Computer-Aided Cytology Diagnosis in Animals: CNN-Based Image Quality
Assessment for Accurate Disease Classification
- URL: http://arxiv.org/abs/2308.06055v1
- Date: Fri, 11 Aug 2023 10:09:08 GMT
- Title: Computer-Aided Cytology Diagnosis in Animals: CNN-Based Image Quality
Assessment for Accurate Disease Classification
- Authors: Jan Krupi\'nski, Maciej Wielgosz, Szymon Mazurek, Krystian
Strza{\l}ka, Pawe{\l} Russek, Jakub Caputa, Daria {\L}ukasik, Jakub
Grzeszczyk, Micha{\l} Karwatowski, Rafa{\l} Fraczek, Ernest Jamro, Marcin
Pietro\'n, Sebastian Koryciak, Agnieszka D\k{a}browska-Boruch, Kazimierz
Wiatr
- Abstract summary: This paper focuses on image quality assessment (IQA) using Convolutional Neural Networks (CNNs)
The system's building blocks are tailored to seamlessly integrate IQA, ensuring reliable performance in disease classification.
- Score: 0.1420200946324199
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a computer-aided cytology diagnosis system designed for
animals, focusing on image quality assessment (IQA) using Convolutional Neural
Networks (CNNs). The system's building blocks are tailored to seamlessly
integrate IQA, ensuring reliable performance in disease classification. We
extensively investigate the CNN's ability to handle various image variations
and scenarios, analyzing the impact on detecting low-quality input data.
Additionally, the network's capacity to differentiate valid cellular samples
from those with artifacts is evaluated. Our study employs a ResNet18 network
architecture and explores the effects of input sizes and cropping strategies on
model performance. The research sheds light on the significance of CNN-based
IQA in computer-aided cytology diagnosis for animals, enhancing the accuracy of
disease classification.
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