Search Results for author: Binglin Li

Found 5 papers, 0 papers with code

ROI-based Deep Image Compression with Swin Transformers

no code implementations12 May 2023 Binglin Li, Jie Liang, Haisheng Fu, Jingning Han

Encoding the Region Of Interest (ROI) with better quality than the background has many applications including video conferencing systems, video surveillance and object-oriented vision tasks.

Image Compression Instance Segmentation +3

Asymmetric Learned Image Compression with Multi-Scale Residual Block, Importance Map, and Post-Quantization Filtering

no code implementations21 Jun 2022 Haisheng Fu, Feng Liang, Jie Liang, Binglin Li, Guohe Zhang, Jingning Han

Based on this observation, we design an asymmetric paradigm, in which the encoder employs three stages of MSRBs to improve the learning capacity, whereas the decoder only needs one stage of MSRB to yield satisfactory reconstruction, thereby reducing the decoding complexity without sacrifcing performance.

Decoder Image Compression +1

Reproducing Kernels and New Approaches in Compositional Data Analysis

no code implementations2 May 2022 Binglin Li, Jeongyoun Ahn

Compositional data, such as human gut microbiomes, consist of non-negative variables whose only the relative values to other variables are available.

Density Estimation

Skeleton-based Approaches based on Machine Vision: A Survey

no code implementations23 Dec 2020 Jie Li, Binglin Li, Min Gao

Recently, skeleton-based approaches have achieved rapid progress on the basis of great success in skeleton representation.

object-detection Object Detection

Deep Learning-based Image Compression with Trellis Coded Quantization

no code implementations26 Jan 2020 Binglin Li, Mohammad Akbari, Jie Liang, Yang Wang

Recently many works attempt to develop image compression models based on deep learning architectures, where the uniform scalar quantizer (SQ) is commonly applied to the feature maps between the encoder and decoder.

Decoder Image Compression +1

Cannot find the paper you are looking for? You can Submit a new open access paper.