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Effect of the Pixel Interpolation Method for Downsampling Medical Images on Deep Learning Accuracy

Daisuke Hirahara, Eichi Takaya, Mizuki Kadowaki, Yasuyuki Kobayashi, Takuya Ueda

2021Journal of Computer and Communications23 citationsDOIOpen Access PDF

Abstract

Background: High-resolution medical images often need to be downsampled because of the memory limitations of the hardware used for machine learning. Although various image interpolation methods are applicable to downsampling, the effect of data preprocessing on the learning performance of convolutional neural networks (CNNs) has not been fully investigated. Methods: In this study, five different pixel interpolation algorithms (nearest neighbor, bilinear, Hamming window, bicubic, and Lanczos interpolation) were used for image downsampling to investigate their effects on the prediction accuracy of a CNN. Chest X-ray images from the NIH public dataset were examined by downsampling 10 patterns. Results: The accuracy improved with a decreasing image size, and the best accuracy was achieved at 64 × 64 pixels. Among the interpolation methods, bicubic interpolation obtained the highest accuracy, followed by the Hamming window.

Topics & Concepts

Bilinear interpolationBicubic interpolationUpsamplingArtificial intelligenceInterpolation (computer graphics)Computer scienceStairstep interpolationImage scalingNearest-neighbor interpolationDemosaicingComputer visionPattern recognition (psychology)AlgorithmMultivariate interpolationImage (mathematics)Image processingColor imageRadiomics and Machine Learning in Medical ImagingCOVID-19 diagnosis using AIAI in cancer detection
Effect of the Pixel Interpolation Method for Downsampling Medical Images on Deep Learning Accuracy | Litcius