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Institution

Naver Corporation

CompanySeongnam-si, South Korea
About: Naver Corporation is a company organization based out in Seongnam-si, South Korea. It is known for research contribution in the topics: Terminal (electronics) & Computer science. The organization has 4038 authors who have published 4294 publications receiving 35045 citations. The organization is also known as: NAVER Corporation & NAVER.


Papers
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Posted Content
TL;DR: This work proposes a wavelet corrected transfer based on whitening and coloring transforms (WCT2) that allows features to preserve their structural information and statistical properties of VGG feature space during stylization and provides a stable video stylization without temporal constraints.
Abstract: Recent style transfer models have provided promising artistic results. However, given a photograph as a reference style, existing methods are limited by spatial distortions or unrealistic artifacts, which should not happen in real photographs. We introduce a theoretically sound correction to the network architecture that remarkably enhances photorealism and faithfully transfers the style. The key ingredient of our method is wavelet transforms that naturally fits in deep networks. We propose a wavelet corrected transfer based on whitening and coloring transforms (WCT$^2$) that allows features to preserve their structural information and statistical properties of VGG feature space during stylization. This is the first and the only end-to-end model that can stylize a $1024\times1024$ resolution image in 4.7 seconds, giving a pleasing and photorealistic quality without any post-processing. Last but not least, our model provides a stable video stylization without temporal constraints. Our code, generated images, and pre-trained models are all available at this https URL.

162 citations

Journal ArticleDOI
TL;DR: EA may be the first-line treatment modality for cystic thyroid nodules, which has comparable therapeutic efficacy to, but is less expensive than, RF ablation.
Abstract: Ethanol ablation may be the first-line treatment modality for cystic thyroid nodules, and it has comparable therapeutic efficacy to, but is less expensive than, radiofrequency ablation.

156 citations

Posted Content
TL;DR: In this paper, a knowledge transfer method via distillation of activation boundaries formed by hidden neurons is proposed, where the student learns a separating boundary between activation region and deactivation region formed by each neuron in the teacher.
Abstract: An activation boundary for a neuron refers to a separating hyperplane that determines whether the neuron is activated or deactivated. It has been long considered in neural networks that the activations of neurons, rather than their exact output values, play the most important role in forming classification friendly partitions of the hidden feature space. However, as far as we know, this aspect of neural networks has not been considered in the literature of knowledge transfer. In this paper, we propose a knowledge transfer method via distillation of activation boundaries formed by hidden neurons. For the distillation, we propose an activation transfer loss that has the minimum value when the boundaries generated by the student coincide with those by the teacher. Since the activation transfer loss is not differentiable, we design a piecewise differentiable loss approximating the activation transfer loss. By the proposed method, the student learns a separating boundary between activation region and deactivation region formed by each neuron in the teacher. Through the experiments in various aspects of knowledge transfer, it is verified that the proposed method outperforms the current state-of-the-art.

155 citations

Proceedings ArticleDOI
01 Jul 2020
TL;DR: The authors proposes a selectively overwriting mechanism for more efficient DST by decomposing DST into two sub-tasks and guiding the decoder to focus only on one of the tasks.
Abstract: Recent works in dialogue state tracking (DST) focus on an open vocabulary-based setting to resolve scalability and generalization issues of the predefined ontology-based approaches. However, they are inefficient in that they predict the dialogue state at every turn from scratch. Here, we consider dialogue state as an explicit fixed-sized memory and propose a selectively overwriting mechanism for more efficient DST. This mechanism consists of two steps: (1) predicting state operation on each of the memory slots, and (2) overwriting the memory with new values, of which only a few are generated according to the predicted state operations. Our method decomposes DST into two sub-tasks and guides the decoder to focus only on one of the tasks, thus reducing the burden of the decoder. This enhances the effectiveness of training and DST performance. Our SOM-DST (Selectively Overwriting Memory for Dialogue State Tracking) model achieves state-of-the-art joint goal accuracy with 51.72% in MultiWOZ 2.0 and 53.01% in MultiWOZ 2.1 in an open vocabulary-based DST setting. In addition, we analyze the accuracy gaps between the current and the ground truth-given situations and suggest that it is a promising direction to improve state operation prediction to boost the DST performance.

150 citations

Proceedings ArticleDOI
05 May 2017
TL;DR: In this paper, an unsupervised approach that can discover and learn landmarks in object categories, thus characterizing their structure, is proposed based on factorizing image deformations, as induced by a viewpoint change or an object deformation, by learning a deep neural network.
Abstract: Learning automatically the structure of object categories remains an important open problem in computer vision. In this paper, we propose a novel unsupervised approach that can discover and learn landmarks in object categories, thus characterizing their structure. Our approach is based on factorizing image deformations, as induced by a viewpoint change or an object deformation, by learning a deep neural network that detects landmarks consistently with such visual effects. Furthermore, we show that the learned landmarks establish meaningful correspondences between different object instances in a category without having to impose this requirement explicitly. We assess the method qualitatively on a variety of object types, natural and man-made. We also show that our unsupervised landmarks are highly predictive of manually-annotated landmarks in face benchmark datasets, and can be used to regress these with a high degree of accuracy.

150 citations


Authors

Showing all 4041 results

NameH-indexPapersCitations
Andrea Vedaldi8930563305
Sunghun Kim5111512994
Eric Gaussier412318203
Un Ju Jung39985696
Hyun-Soo Kim374215650
Gabriela Csurka3714510959
Nojun Kwak342346026
Young-Jin Park312573759
Sung Joo Kim311963078
Jae-Hoon Kim303235847
Jung-Ryul Lee292223322
Joon Son Chung28734900
Ok-Hwan Lee271632896
Diane Larlus27694722
Jung Goo Lee261421917
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20226
2021144
2020174
2019138
201882
201764