Attentive Semantic Exploring for Manipulated Face Detection
- URL: http://arxiv.org/abs/2005.02958v2
- Date: Wed, 28 Oct 2020 06:07:21 GMT
- Title: Attentive Semantic Exploring for Manipulated Face Detection
- Authors: Zehao Chen and Hua Yang
- Abstract summary: We find that segmenting images into semantic fragments could be effective, as discriminative defects and distortions are closely related to such fragments.
We propose a novel manipulated face detection method based on Multilevel Facial Semantic and Cascade Attention Mechanism.
- Score: 12.635690519021555
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Face manipulation methods develop rapidly in recent years, whose potential
risk to society accounts for the emerging of researches on detection methods.
However, due to the diversity of manipulation methods and the high quality of
fake images, detection methods suffer from a lack of generalization ability. To
solve the problem, we find that segmenting images into semantic fragments could
be effective, as discriminative defects and distortions are closely related to
such fragments. Besides, to highlight discriminative regions in fragments and
to measure contribution to the final prediction of each fragment is efficient
for the improvement of generalization ability. Therefore, we propose a novel
manipulated face detection method based on Multilevel Facial Semantic
Segmentation and Cascade Attention Mechanism. To evaluate our method, we
reconstruct two datasets: GGFI and FFMI, and also collect two open-source
datasets. Experiments on four datasets verify the advantages of our approach
against other state-of-the-arts, especially its generalization ability.
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