2021
DOI: 10.26686/wgtn.13884893.v1
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Genetic Programming-Based Discriminative Feature Learning for Low-Quality Image Classification

Abstract: Being able to learn discriminative features from low-quality images has raised much attention recently due to their wide applications ranging from autonomous driving to safety surveillance. However, this task is difficult due to high variations across images, such as scale, rotation, illumination, and viewpoint, and distortions in images, such as blur, low contrast, and noise. Image preprocessing could improve the quality of the images, but it often requires human intervention and domain knowledge. Genetic pro… Show more

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