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Edson M. Hung

Researcher at University of Brasília

Publications -  32
Citations -  423

Edson M. Hung is an academic researcher from University of Brasília. The author has contributed to research in topics: Motion estimation & Motion compensation. The author has an hindex of 10, co-authored 32 publications receiving 396 citations. Previous affiliations of Edson M. Hung include Samsung.

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Proceedings ArticleDOI

On Macroblock Partition for Motion Compensation

TL;DR: A fast algorithm which detects the predominant edge orientations within a block in order to pre-select candidate wedge lines is proposed and a comparison among macroblock partition methods is performed, which points to the higher performance of the wedge partition method.
Journal ArticleDOI

Video Super-Resolution Using Codebooks Derived From Key-Frames

TL;DR: This work proposes a method to super-resolve a video using multiple overlapped variable-block-size codebooks, and uses a multiresolution approach to example-based SR and discusses codebook construction for video sequences.
Posted Content

Loss-resilient Coding of Texture and Depth for Free-viewpoint Video Conferencing

TL;DR: In this article, an error concealment strategy is proposed to adaptively blend corresponding pixels in the two captured views during DIBR, so that pixels from the more reliable transmitted view are weighted more heavily.
Journal ArticleDOI

Loss-Resilient Coding of Texture and Depth for Free-Viewpoint Video Conferencing

TL;DR: An integrated approach that exploits the representation redundancy inherent in the multiple streamed videos-a voxel in the 3D scene visible to two captured views is sampled and coded twice in the two views to contain the adverse effects of network packet losses during texture and depth video transmission.
Proceedings ArticleDOI

Efficiency improvements for a geometric-partition-based video coder

TL;DR: This work presents a motion vector prediction scheme based on directional partitions and presents a method for complexity reduction based on the most frequent partitions, showing that it is possible to still produce good coding gains with lower complexity than previous approaches.