Deep Learning Face Attributes in the Wild
true true false true true true true false false true (c) 5 attributes 10 attributes 20 attributes 40 attributes Figure 1. (a) Inaccurate localization and alignment lead to prediction errors on attributes by existing methods (b) LNet localizes face regions by averaging the response maps of attribute filters. ANet predicts attributes
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