https://doi.org/10.35668/2520-6524-2026-1-11
Suchkov V. I. — Postgraduate Student, Taras Shevchenko National University of Kyiv, 4-d, Akademika Hlushkova Ave.,Kyiv, Ukraine, 02000; valentysuchkov@gmail.com; ORCID: 0009-0006-7773-0660
METHODS OF PREPROCESSING CHEST X-RAY IMAGES FOR CLASSIFICATION TASKS
Abstract. The article examines the application of chest X-ray image preprocessing methods in the task of automated classification of medical images. Preprocessing is an important stage of data preparation, since the characteristics of input images can significantly affect the efficiency of training artificial intelligence models and the quality of medical image analysis. The study analyzes various approaches to image preprocessing in the task of classifying X-ray images into the following classes: COVID-19, pneumonia, and no disease. In particular, the application of the Gaussian filter, median filter, and contrast limited adaptive histogram equalization (CLAHE) method is considered. These methods are used, respectively, for noise smoothing, contour preservation, and enhancement of local image contrast. The results of the study confirm that the application of preprocessing methods improves the effectiveness of chest X-ray image classification. The contrast limited adaptive histogram equalization method demonstrated the best classification results in the experiments conducted.
Keywords: convolutional neural network, data preprocessing, dataset, pattern recognition, artificial intelligence.
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