Cytological smears play an important role in disease diagnosis, particularly for specific cancers such as thyroid and cervical cancer, where cytological smears are primarily cell smears. With the rapid development of deep learning technology, more and more people are using deep neural networks to classify and discriminate cancers. However, getting ethically certified and clear cytological smears is hard, so training is always based on small data sets. When facing small cell smears with different levels of brightness and clarity, which are collected from various devices and environments, models' performance is often limited. Given the above situation, we have designed a cytological smear classification model that is trained on an augmented data set and considered the gray-level co-occurrence matrix of the image, making the model perform better when faced with noisy images, and we call it the Glcm-BoT model.
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