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Sheng Mei Shen

Researcher at Panasonic

Publications -  166
Citations -  3515

Sheng Mei Shen is an academic researcher from Panasonic. The author has contributed to research in topics: Decoding methods & Pixel. The author has an hindex of 27, co-authored 166 publications receiving 3099 citations.

Papers
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Journal ArticleDOI

Scale-Aware Fast R-CNN for Pedestrian Detection

TL;DR: SAF R-CNN as discussed by the authors introduces multiple built-in subnetworks which detect pedestrians with scales from disjoint ranges, and outputs from all of the sub-networks are then adaptively combined to generate the final detection results that are shown to be robust to large variance in instance scales.
Patent

Image predictive coding method

TL;DR: In this article, image data of a reproduction small region adjacent to the image of an intra-frame prediction small region of the objective small region to be processed is used as image data for the reconstruction of the difference small region.
Proceedings ArticleDOI

Towards Pose Invariant Face Recognition in the Wild

TL;DR: Qualitative and quantitative experiments on both controlled and in-the-wild benchmarks demonstrate the superiority of the proposed Pose Invariant Model for face recognition in the wild over the state of thearts.
Patent

Coding distortion removal method, video encoding method, video decoding method, and apparatus and program for the same

TL;DR: In this paper, a deblocking filter is used to remove block noise from every block in a compressed video signal, but removing block noise requires a significant load on the deblocking filters.
Patent

Method and apparatus for removing noise in still and moving pictures

TL;DR: In this article, a method for filtering blocky noise, as well as ring and mosquito noise, from still and moving pictures is disclosed, which has the steps for locating a block boundary in the picture and selecting pixels on one side of the block boundary as a first group, calculating mean values (m1, m2) of the pixels in each of the first and second groups, detecting whether or not the deviations (c1, c2) are smaller than a predetermined threshold value (T2), applying a first predetermined filtering (equations (5), (6)) when the