Radon Cumulative Distribution Transform Subspace Modeling for Image Classification

We present a new supervised image classification method applicable to a broad class of image deformation models. The method makes use of the previously described Radon Cumulative Distribution Transform (R-CDT) for image data, whose mathematical properties are exploited to express the image data in a...

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Veröffentlicht in:Journal of mathematical imaging and vision 2021-11, Vol.63 (9), p.1185-1203
Hauptverfasser: Shifat-E-Rabbi, Mohammad, Yin, Xuwang, Rubaiyat, Abu Hasnat Mohammad, Li, Shiying, Kolouri, Soheil, Aldroubi, Akram, Nichols, Jonathan M., Rohde, Gustavo K.
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Sprache:eng
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Zusammenfassung:We present a new supervised image classification method applicable to a broad class of image deformation models. The method makes use of the previously described Radon Cumulative Distribution Transform (R-CDT) for image data, whose mathematical properties are exploited to express the image data in a form that is more suitable for machine learning. While certain operations such as translation, scaling, and higher-order transformations are challenging to model in native image space, we show the R-CDT can capture some of these variations and thus render the associated image classification problems easier to solve. The method—utilizing a nearest-subspace algorithm in the R-CDT space—is simple to implement, non-iterative, has no hyper-parameters to tune, is computationally efficient, label efficient, and provides competitive accuracies to state-of-the-art neural networks for many types of classification problems. In addition to the test accuracy performances, we show improvements (with respect to neural network-based methods) in terms of computational efficiency (it can be implemented without the use of GPUs), number of training samples needed for training, as well as out-of-distribution generalization. The Python code for reproducing our results is available at Shifat-E-Rabbi et al. (Python code implementing the Radon cumulative distribution transform subspace model for image classification. https://github.com/rohdelab/rcdt_ns_classifier ).
ISSN:0924-9907
1573-7683
DOI:10.1007/s10851-021-01052-0