Deep Learning for Facial Informatics
Deep learning has been revolutionizing many fields in computer vision, and facial informatics is one of the major fields. Novel approaches and performance breakthroughs are often reported on existing benchmarks. As the performances on existing benchmarks are close to saturation, larger and more chal...
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Year of Publication: | 2020 |
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Physical Description: | 1 electronic resource (102 p.) |
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Hsu, Gee-Sern Jison edt Deep Learning for Facial Informatics Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2020 1 electronic resource (102 p.) text txt rdacontent computer c rdamedia online resource cr rdacarrier Deep learning has been revolutionizing many fields in computer vision, and facial informatics is one of the major fields. Novel approaches and performance breakthroughs are often reported on existing benchmarks. As the performances on existing benchmarks are close to saturation, larger and more challenging databases are being made and considered as new benchmarks, further pushing the advancement of the technologies. Considering face recognition, for example, the VGG-Face2 and Dual-Agent GAN report nearly perfect and better-than-human performances on the IARPA Janus Benchmark A (IJB-A) benchmark. More challenging benchmarks, e.g., the IARPA Janus Benchmark A (IJB-C), QMUL-SurvFace and MegaFace, are accepted as new standards for evaluating the performance of a new approach. Such an evolution is also seen in other branches of face informatics. In this Special Issue, we have selected the papers that report the latest progresses made in the following topics: 1. Face liveness detection 2. Emotion classification 3. Facial age estimation 4. Facial landmark detection We are hoping that this Special Issue will be beneficial to all fields of facial informatics. English History of engineering & technology bicssc deep learning RGB depth facial landmarking merging networks 3D geometry data 2D attribute maps fused CNN feature coarse-to-fine convolutional neural network (CNN) deep metric learning multi-task learning image classification age estimation generative adversarial network emotion classification facial key point detection facial images processing convolutional neural networks face liveness detection convolutional neural network thermal image external knowledge 3-03936-964-4 3-03936-965-2 Timofte, Radu edt Hsu, Gee-Sern Jison oth Timofte, Radu oth |
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English |
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Timofte, Radu Hsu, Gee-Sern Jison Timofte, Radu |
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Timofte, Radu Hsu, Gee-Sern Jison Timofte, Radu |
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HerausgeberIn Sonstige Sonstige |
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Deep Learning for Facial Informatics |
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Deep Learning for Facial Informatics |
title_full |
Deep Learning for Facial Informatics |
title_fullStr |
Deep Learning for Facial Informatics |
title_full_unstemmed |
Deep Learning for Facial Informatics |
title_auth |
Deep Learning for Facial Informatics |
title_new |
Deep Learning for Facial Informatics |
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deep learning for facial informatics |
publisher |
MDPI - Multidisciplinary Digital Publishing Institute |
publishDate |
2020 |
physical |
1 electronic resource (102 p.) |
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3-03936-964-4 3-03936-965-2 |
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Not Illustrated |
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AT hsugeesernjison deeplearningforfacialinformatics AT timofteradu deeplearningforfacialinformatics |
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(CKB)5400000000046111 (oapen)https://directory.doabooks.org/handle/20.500.12854/69112 (EXLCZ)995400000000046111 |
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Deep Learning for Facial Informatics |
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