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Fan Yang

Researcher at Temple University

Publications -  36
Citations -  3959

Fan Yang is an academic researcher from Temple University. The author has contributed to research in topics: Video tracking & Internal medicine. The author has an hindex of 14, co-authored 30 publications receiving 2118 citations. Previous affiliations of Fan Yang include Xidian University.

Papers
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Proceedings ArticleDOI

Road crack detection using deep convolutional neural network

TL;DR: Quantitative evaluation conducted on a data set of 500 images of size 3264 χ 2448, collected by a low-cost smart phone, demonstrates that the learned deep features with the proposed deep learning framework provide superior crack detection performance when compared with features extracted with existing hand-craft methods.
Proceedings ArticleDOI

LaSOT: A High-Quality Benchmark for Large-Scale Single Object Tracking

TL;DR: LaSOT is presented, a high-quality benchmark for Large-scale Single Object Tracking that consists of 1,400 sequences with more than 3.5M frames in total, and is the largest, to the best of the authors' knowledge, densely annotated tracking benchmark.
Book ChapterDOI

The sixth visual object tracking VOT2018 challenge results

Matej Kristan, +158 more
TL;DR: The Visual Object Tracking challenge VOT2018 is the sixth annual tracker benchmarking activity organized by the VOT initiative; results of over eighty trackers are presented; many are state-of-the-art trackers published at major computer vision conferences or in journals in the recent years.
Posted Content

LaSOT: A High-quality Benchmark for Large-scale Single Object Tracking

TL;DR: The LaSOT benchmark as discussed by the authors provides a high-quality benchmark for large-scale single object tracking, which consists of 1,400 sequences with more than 3.5M frames in total.
Journal ArticleDOI

Feature Pyramid and Hierarchical Boosting Network for Pavement Crack Detection

TL;DR: Yan et al. as mentioned in this paper proposed a novel network architecture, named feature pyramid and hierarchical boosting network (FPHBN), which integrates context information to low-level features for crack detection in a feature pyramid way, and it balances the contributions of both easy and hard samples to loss by nested sample reweighting in a hierarchical way during training.