Collection of 2429 constrained headshots of 277 volunteers for deep learning

Deep learning has rapidly been filtrating many aspects of human lives. In particular, image recognition by convolutional neural networks has inspired numerous studies in this area. Hardware and software technologies as well as large quantities of data have contributed to the drastic development of t...

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Veröffentlicht in:Scientific reports 2022-03, Vol.12 (1), p.3730-3730, Article 3730
Hauptverfasser: Aoto, Saki, Hangai, Mayumi, Ueno-Yokohata, Hitomi, Ueda, Aki, Igarashi, Maki, Ito, Yoshikazu, Tsukamoto, Motoko, Jinno, Tomoko, Sakamoto, Mika, Okazaki, Yuka, Hasegawa, Fuyuki, Ogata-Kawata, Hiroko, Namura, Saki, Kojima, Kazuaki, Kikuya, Masao, Matsubara, Keiko, Taniguchi, Kosuke, Okamura, Kohji
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Sprache:eng
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Zusammenfassung:Deep learning has rapidly been filtrating many aspects of human lives. In particular, image recognition by convolutional neural networks has inspired numerous studies in this area. Hardware and software technologies as well as large quantities of data have contributed to the drastic development of the field. However, the application of deep learning is often hindered by the need for big data and the laborious manual annotation thereof. To experience deep learning using the data compiled by us, we collected 2429 constrained headshot images of 277 volunteers. The collection of face photographs is challenging in terms of protecting personal information; we therefore established an online procedure in which both the informed consent and image data could be obtained. We did not collect personal information, but issued agreement numbers to deal with withdrawal requests. Gender and smile labels were manually and subjectively annotated only from the appearances, and final labels were determined by majority among our team members. Rotated, trimmed, resolution-reduced, decolorized, and matrix-formed data were allowed to be publicly released. Moreover, simplified feature vectors for data sciences were released. We performed gender and smile recognition by building convolutional neural networks based on the Inception V3 model with pre-trained ImageNet data to demonstrate the usefulness of our dataset.
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-022-07560-2