Gender recognition in the wild: a robustness evaluation over corrupted images

Volume: 12, Issue: 12, Pages: 10461 - 10472
Published: Dec 23, 2020
Abstract
In the era of deep learning, the methods for gender recognition from face images achieve remarkable performance over most of the standard datasets. However, the common experimental analyses do not take into account that the face images given as input to the neural networks are often affected by strong corruptions not always represented in standard datasets. In this paper, we propose an experimental framework for gender recognition “in the wild”....
Paper Details
Title
Gender recognition in the wild: a robustness evaluation over corrupted images
Published Date
Dec 23, 2020
Volume
12
Issue
12
Pages
10461 - 10472
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