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Tae-Kyun Kim

Researcher at Imperial College London

Publications -  308
Citations -  11653

Tae-Kyun Kim is an academic researcher from Imperial College London. The author has contributed to research in topics: Pose & Facial recognition system. The author has an hindex of 51, co-authored 295 publications receiving 9522 citations. Previous affiliations of Tae-Kyun Kim include KAIST & University of Cambridge.

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Patent

MIM capacitor and method for fabricating the same, semiconductor device comprising the same

TL;DR: In this paper, the MIM capacitor includes a bottom electrode, a dielectric layer which is formed on the bottom electrode and a top electrode which is made from the dielectrical layer.
Patent

Unmanned aerial vehicle and method for photographing operator using same

TL;DR: In this paper, an unmanned aerial vehicle (UAV) body, a camera mounted on the body, and a sensor module installed in the body to sense surrounding environment information is used to detect a user's throwing gesture using the UAV.
Proceedings ArticleDOI

Pop-Out Motion: 3D-Aware Image Deformation via Learning the Shape Laplacian

TL;DR: This paper proposes to take a supervised learning-based approach to predict the shape Laplacian of the underlying volume of a 3D reconstruction represented as a point cloud, and obtains bounded biharmonic weights to model plausible handle-based image deformation.
Patent

Thermal inkjet printhead

TL;DR: A thermal inkjet printhead that includes a substrate, a chamber layer stacked on the substrate, an ink chamber formed in the chamber layer, a heater to heat ink filled in the ink chamber to generate bubbles, and a nozzle layer stacked in the nozzle layer, wherein a ratio of the volume of ink ejected through the nozzle with respect to the sum of the volumes of the ink and the nozzle is in the range of approximately 40 to 60% was shown in this article.
Posted Content

AugLabel: Exploiting Word Representations to Augment Labels for Face Attribute Classification

TL;DR: This paper presents a simple, yet effective novel method to generate fixed dimensional labels with continuous values for images by exploiting the word2vec – semantic representations – of the existing categorical labels of the already existing labels.