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Patch-Gated CNN for Occlusion-aware Facial Expression Recognition

机译:贴片门CNN用于遮挡意识的面部表情识别

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Facial expression recognition in the wild is challenging due to various un-constrained conditions. Although existing facial expression classifiers have been almost perfect on analyzing constrained frontal faces, they fail to perform well on partially occluded faces that are common in the wild. In this paper, we propose an end-to-end trainable Patch-Gated Convolution Neutral Network (PG-CNN) that can automatically percept the occluded region of the face and focus on the most discriminative un-occluded regions. To determine the possible regions of interest on the face, PG-CNN decomposes an intermediate feature map into several patches according to the positions of related facial landmarks. Then, via a proposed Patch-Gated Unit, PG-CNN reweighs each patch by the unobstructed-ness or importance that is computed from the patch itself. The proposed PG-CNN is evaluated on two largest in-the-wild facial expression datasets (RAF-DB and AffectNet) and their modifications with synthesized facial occlusions. Experimental results show that PG-CNN improves the recognition accuracy on both the original faces and faces with synthesized occlusions. Visualization results demonstrate that, compared with the CNN without Patch-Gated Unit, PG-CNN is capable of shifting the attention from the occluded patch to other related but unobstructed ones. Experiments also show that PG-CNN outperforms other state-of-the-art methods on several widely used in-the-lab facial expression datasets under the cross-dataset evaluation protocol.
机译:由于各种不受限制的条件,在野外进行面部表情识别具有挑战性。尽管现有的面部表情分类器在分析受约束的正面面孔方面几乎是完美的,但它们在野外常见的部分遮挡面孔上表现不佳。在本文中,我们提出了一种端到端可训练的补丁门控卷积神经网络(PG-CNN),该网络可以自动感知人脸的遮挡区域,并专注于最具区分性的非遮挡区域。为了确定面部上可能的感兴趣区域,PG-CNN根据相关面部地标的位置将中间特征图分解为几个小块。然后,PG-CNN通过提出的补丁门控单元,通过补丁本身计算出的通畅性或重要性来重新称重每个补丁。拟议的PG-CNN在两个最大的野生面部表情数据集(RAF-DB和AffectNet)上进行了评估,并通过合成面部遮挡对其进行了修改。实验结果表明,PG-CNN提高了原始人脸和具有合成遮挡的人脸的识别精度。可视化结果表明,与没有贴片门控单元的CNN相比,PG-CNN能够将注意力从遮挡的贴片转移到其他相关但畅通的贴片。实验还表明,在跨数据集评估协议下,PG-CNN在几种广泛使用的实验室面部表情数据集上优于其他最新方法。

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