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Xiaodan Liang

Researcher at Sun Yat-sen University

Publications -  340
Citations -  19838

Xiaodan Liang is an academic researcher from Sun Yat-sen University. The author has contributed to research in topics: Computer science & Object detection. The author has an hindex of 61, co-authored 318 publications receiving 14121 citations. Previous affiliations of Xiaodan Liang include Carnegie Mellon University & Huawei.

Papers
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Book ChapterDOI

Is Faster R-CNN Doing Well for Pedestrian Detection?

TL;DR: A very simple but effective baseline for pedestrian detection, using an RPN followed by boosted forests on shared, high-resolution convolutional feature maps, presenting competitive accuracy and good speed.
Proceedings Article

Toward controlled generation of text

TL;DR: A new neural generative model is proposed which combines variational auto-encoders and holistic attribute discriminators for effective imposition of semantic structures inGeneric generation and manipulation of text.
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.
Proceedings ArticleDOI

Object Region Mining with Adversarial Erasing: A Simple Classification to Semantic Segmentation Approach

TL;DR: This work investigates a principle way to progressively mine discriminative object regions using classification networks to address the weakly-supervised semantic segmentation problems and proposes a new adversarial erasing approach for localizing and expanding object regions progressively.
Posted Content

Toward Controlled Generation of Text

TL;DR: This article proposed a new neural generative model which combines variational auto-encoders and holistic attribute discriminators for effective imposition of semantic structures, which learns highly interpretable representations from even only word annotations, and produces realistic sentences with desired attributes.