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1.
Neuroimage ; 231: 117845, 2021 05 01.
Article in English | MEDLINE | ID: mdl-33582276

ABSTRACT

Recent advances in automated face recognition algorithms have increased the risk that de-identified research MRI scans may be re-identifiable by matching them to identified photographs using face recognition. A variety of software exist to de-face (remove faces from) MRI, but their ability to prevent face recognition has never been measured and their image modifications can alter automated brain measurements. In this study, we compared three popular de-facing techniques and introduce our mri_reface technique designed to minimize effects on brain measurements by replacing the face with a population average, rather than removing it. For each technique, we measured 1) how well it prevented automated face recognition (i.e. effects on exceptionally-motivated individuals) and 2) how it altered brain measurements from SPM12, FreeSurfer, and FSL (i.e. effects on the average user of de-identified data). Before de-facing, 97% of scans from a sample of 157 volunteers were correctly matched to photographs using automated face recognition. After de-facing with popular software, 28-38% of scans still retained enough data for successful automated face matching. Our proposed mri_reface had similar performance with the best existing method (fsl_deface) at preventing face recognition (28-30%) and it had the smallest effects on brain measurements in more pipelines than any other, but these differences were modest.


Subject(s)
Automated Facial Recognition/methods , Biomedical Research/methods , Brain/diagnostic imaging , Image Processing, Computer-Assisted/methods , Magnetic Resonance Imaging/methods , Neuroimaging/methods , Adult , Aged , Aged, 80 and over , Algorithms , Automated Facial Recognition/trends , Brain/physiology , Female , Humans , Image Processing, Computer-Assisted/trends , Magnetic Resonance Imaging/trends , Male , Middle Aged , Neuroimaging/trends , Software/trends
2.
IEEE Trans Neural Netw Learn Syst ; 32(10): 4742-4747, 2021 10.
Article in English | MEDLINE | ID: mdl-32857706

ABSTRACT

In deep face recognition, the commonly used softmax loss and its newly proposed variations are not yet sufficiently effective to handle the class imbalance and softmax saturation issues during the training process while extracting discriminative features. In this brief, to address both issues, we propose a class-variant margin (CVM) normalized softmax loss, by introducing a true-class margin and a false-class margin into the cosine space of the angle between the feature vector and the class-weight vector. The true-class margin alleviates the class imbalance problem, and the false-class margin postpones the early individual saturation of softmax. With negligible computational complexity increment during training, the new loss function is easy to implement in the common deep learning frameworks. Comprehensive experiments on the LFW, YTF, and MegaFace protocols demonstrate the effectiveness of the proposed CVM loss function.


Subject(s)
Automated Facial Recognition/trends , Deep Learning/trends , Neural Networks, Computer , Automated Facial Recognition/methods , Humans
5.
IEEE Trans Neural Netw Learn Syst ; 31(7): 2430-2440, 2020 07.
Article in English | MEDLINE | ID: mdl-31425055

ABSTRACT

In this paper, we propose a label-less learning for emotion cognition (LLEC) to achieve the utilization of a large amount of unlabeled data. We first inspect the unlabeled data from two perspectives, i.e., the feature layer and the decision layer. By utilizing the similarity model and the entropy model, this paper presents a hybrid label-less learning that can automatically label data without human intervention. Then, we design an enhanced hybrid label-less learning to purify the automatic labeled data. To further improve the accuracy of emotion detection model and increase the utilization of unlabeled data, we apply enhanced hybrid label-less learning for multimodal unlabeled emotion data. Finally, we build a real-world test bed to evaluate the LLEC algorithm. The experimental results show that the LLEC algorithm can improve the accuracy of emotion detection significantly.


Subject(s)
Automated Facial Recognition/methods , Cognition , Deep Learning , Emotions , Speech Recognition Software , Automated Facial Recognition/trends , Cognition/physiology , Deep Learning/trends , Emotions/physiology , Humans , Speech Recognition Software/trends
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