2018
DOI: 10.3390/app8020300
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Uncertainty Flow Facilitates Zero-Shot Multi-Label Learning in Affective Facial Analysis

Abstract: Featured Application: The proposed Uncertainty Flow framework may benefit the facial analysis with its promised elevation in discriminability in multi-label affective classification tasks. Moreover, this framework also allows the efficient model training and between tasks knowledge transfer. The applications that rely heavily on continuous prediction on emotional valance, e.g., to monitor prisoners' emotional stability in jail, can be directly benefited from our framework. Abstract:To lower the single-label de… Show more

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Cited by 4 publications
(3 citation statements)
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“…The advantages of choosing a CNN for FER systems include its extremely high level of performance, the elimination of the manual feature extraction requirement since the learning is automatically performed on the training data, and perhaps the most important advantage, which is transfer learning, because CNNs allow subsequent constructions based on initial parts of other pre-trained CNNs [ 34 , 71 , 105 , 106 , 107 , 108 , 109 , 110 ]. Transfer learning can be extremely useful because information learned for one task can be transferred to another task, greatly reducing the processing time by eliminating the need to recollect training data for that given task.…”
Section: New Trends In Using Neural Network For Fermentioning
confidence: 99%
“…The advantages of choosing a CNN for FER systems include its extremely high level of performance, the elimination of the manual feature extraction requirement since the learning is automatically performed on the training data, and perhaps the most important advantage, which is transfer learning, because CNNs allow subsequent constructions based on initial parts of other pre-trained CNNs [ 34 , 71 , 105 , 106 , 107 , 108 , 109 , 110 ]. Transfer learning can be extremely useful because information learned for one task can be transferred to another task, greatly reducing the processing time by eliminating the need to recollect training data for that given task.…”
Section: New Trends In Using Neural Network For Fermentioning
confidence: 99%
“…Results show the promising state of eFES as compared to the traditional feature selection process. Lastly, an inductive transfer learning-based framework (Uncertainty Flow) is put forward to allow knowledge transfer from a single-labeled emotion recognition task to a multi-label affective recognition task to lower the single-label dependency on affective facial analysis [18]. The authors demonstrate that Uncertainty Flow in multi-label facial expression analysis exhibits superiority to conventional multi-label learning algorithms and multi-label compatible neural networks.…”
Section: The Papersmentioning
confidence: 99%
“…Face detection is one of the most hot topics in computer vision as it is a key step for many different applications, such as face recognition [1], facial expression analysis [2], eye-tracking [3], facial performance capture [4], facial expression transformation [5], etc. In fact, the applications are not limited to the traditional areas, there are still some exciting interdisciplinary applications [6][7][8][9][10][11] in the field of animation.…”
Section: Introductionmentioning
confidence: 99%