人群计数最全代码、数据、论文合集(含最新CVPR2019论文)
人群计数最全代码、数据、论文合集
前言
之前极市曾分享了几个GitHub上的awesome系列项目,反响都很好(点击文末阅读原文即可获取以下资源)。
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【资源】手势估计最全资源
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【资源】多目标追踪资源列表
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【资源】OCR 文本检测干货汇总
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【资源】语义分割 paper 以及 code 汇总
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【资源】视频研究常用方法、数据集和任务汇总
今日分享一个人群计数超全资源。近年来,由于拥挤人群引发的踩踏事故频发,人群计数在视频监控、公共安全方面的作用越发突出,以下是作者整理的人群计数资源,包含代码、工具、数据集、论文、leaderboard等。
作者:gjy3035
来源:https://github.com/gjy3035/Awesome-Crowd-Counting
注:本文涉及较多超链接,请点击文末阅读原文,以获得更好的阅读体验。
Contents
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Code
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Tools
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Datasets
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Papers
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Leaderboard
Code
Crowd Counting Code Framework (C^3 Framework)
[C^3 Framework] An open-source PyTorch code for crowd counting, which is under development.
Tools
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Density Map Generation from Key Points [Matlab Code] [Python Code] [Fast Python Code]
Datasets
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GCC Dataset [Link] (a large-scale, synthetic and diverse dataset)
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UCF-QNRF Dataset [Link]
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ShanghaiTech Dataset [Link: Dropbox / BaiduNetdisk]
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WorldExpo'10 Dataset [Link]
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UCF CC 50 Dataset [Link]
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Mall Dataset [Link]
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UCSD Dataset [Link]
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SmartCity Dataset [Link: GoogleDrive / BaiduNetdisk]
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AHU-Crowd Dataset [Link]
Papers
arXiv papers
This section only includes the last ten papers since 2018 in arXiv.org. Previous papers will be hidden using <!--...-->. If you want to view them, please open the raw file to read the source code. Note that all unpublished arXiv papers are not included into the leaderboard of performance.
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Crowd Counting and Density Estimation by Trellis Encoder-Decoder Networks [paper]
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Generalizing semi-supervised generative adversarial networks to regression using feature contrasting [paper]
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Improving Dense Crowd Counting Convolutional Neural Networks using Inverse k-Nearest Neighbor Maps and Multiscale Upsampling [paper]
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Dual Path Multi-Scale Fusion Networks with Attention for Crowd Counting [paper]
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Scale-Aware Attention Network for Crowd Counting [paper]
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Mask-aware networks for crowd counting [paper]
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ADCrowdNet: An Attention-injective Deformable Convolutional Network for Crowd Understanding [paper]
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Context-Aware Crowd Counting [paper]
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PaDNet: Pan-Density Crowd Counting [paper]
Methods dealing with the lack of labelled data
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[CCWld] Learning from Synthetic Data for Crowd Counting in the Wild (CVPR2019) [paper] [Project] [arxiv]) 本文解读请关注极市今日推送二条
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[SL2R] Exploiting Unlabeled Data in CNNs by Self-supervised Learning to Rank (T-PAMI) [paper](extension of L2R)
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[GWTA-CCNN] Almost Unsupervised Learning for Dense Crowd Counting (AAAI2019) [paper]
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[CAC] Class-Agnostic Counting (ACCV2018) [paper code]
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[L2R] Leveraging Unlabeled Data for Crowd Counting by Learning to Rank (CVPR2018) [paper] [code]
2019
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[CCWld] Learning from Synthetic Data for Crowd Counting in the Wild (CVPR2019) [paper] [Project] [arxiv])
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[SL2R] Exploiting Unlabeled Data in CNNs by Self-supervised Learning to Rank (T-PAMI) [paper](extension of L2R)
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[ASD] Adaptive Scenario Discovery for Crowd Counting (ICASSP2019) [paper]
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Crowd Counting Using Scale-Aware Attention Networks (WACV2019) [paper]
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[GWTA-CCNN] Almost Unsupervised Learning for Dense Crowd Counting (AAAI2019) [paper]
2018
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[LCFCN] Where are the Blobs: Counting by Localization with Point Supervision (ECCV2018) [paper] [code]
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[CAC] Class-Agnostic Counting (ACCV2018) [paper code]
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[AFP] Crowd Counting by Adaptively Fusing Predictions from an Image Pyramid (BMVC2018) [paper]
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[DRSAN] Crowd Counting using Deep Recurrent Spatial-Aware Network (IJCAI2018) [paper]
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[TDF-CNN] Top-Down Feedback for Crowd Counting Convolutional Neural Network (AAAI2018) [paper]
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[SANet] Scale Aggregation Network for Accurate and Efficient Crowd Counting (ECCV2018) [paper]
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[ic-CNN] Iterative Crowd Counting (ECCV2018) [paper]
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[CL] Composition Loss for Counting, Density Map Estimation and Localization in Dense Crowds (ECCV2018) [paper]
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[D-ConvNet] Crowd Counting with Deep Negative Correlation Learning (CVPR2018) [paper] [code]
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[IG-CNN] Divide and Grow: Capturing Huge Diversity in Crowd Images with Incrementally Growing CNN (CVPR2018) [paper]
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[BSAD] Body Structure Aware Deep Crowd Counting (TIP2018) [paper]
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[CSR] CSRNet: Dilated Convolutional Neural Networks for Understanding the Highly Congested Scenes (CVPR2018) [paper] [code]
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[L2R] Leveraging Unlabeled Data for Crowd Counting by Learning to Rank (CVPR2018) [paper] [code]
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[ACSCP] Crowd Counting via Adversarial Cross-Scale Consistency Pursuit (CVPR2018) [paper]
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[DecideNet] DecideNet: Counting Varying Density Crowds Through Attention Guided Detection and Density (CVPR2018) [paper]
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[AMDCN] An Aggregated Multicolumn Dilated Convolution Network for Perspective-Free Counting (CVPR2018) [paper] [code]
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[A-CCNN] A-CCNN: Adaptive CCNN for Density Estimation and Crowd Counting (ICIP2018) [paper]
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[DR-ResNet] A Deeply-Recursive Convolutional Network for Crowd Counting (ICASSP2018) [paper]
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[SaCNN] Crowd counting via scale-adaptive convolutional neural network (WACV2018) [paper] [code]
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[GAN-MTR] Crowd Counting With Minimal Data Using Generative Adversarial Networks For Multiple Target Regression (WACV2018) [paper]
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[NetVLAD] Multiscale Multitask Deep NetVLAD for Crowd Counting (TII2018) [paper] [code]
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[W-VLAD] Crowd Counting via Weighted VLAD on Dense Attribute Feature Maps (CSVT2018) [paper]
2017
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[CP-CNN] Generating High-Quality Crowd Density Maps using Contextual Pyramid CNNs (ICCV2017) [paper]
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[ConvLSTM] Spatiotemporal Modeling for Crowd Counting in Videos (ICCV2017) [paper]
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[CMTL] CNN-based Cascaded Multi-task Learning of High-level Prior and Density Estimation for Crowd Counting (AVSS2017) [paper] [code]
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[ResnetCrowd] ResnetCrowd: A Residual Deep Learning Architecture for Crowd Counting, Violent Behaviour Detection and Crowd Density Level Classification (AVSS2017) [paper]
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[Switching CNN] Switching Convolutional Neural Network for Crowd Counting (CVPR2017) [paper] [code]
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A Survey of Recent Advances in CNN-based Single Image Crowd Counting and Density Estimation (PR Letters) [paper]
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[MSCNN] Multi-scale Convolution Neural Networks for Crowd Counting (ICIP2017) [paper] [code]
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[FCNCC] Fully Convolutional Crowd Counting On Highly Congested Scenes (VISAPP2017) [paper]
2016
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[Hydra-CNN] Towards perspective-free object counting with deep learning (ECCV2016) [paper] [code]
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[CNN-Boosting] Learning to Count with CNN Boosting (ECCV2016) [paper]
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[Crossing-line] Crossing-line Crowd Counting with Two-phase Deep Neural Networks (ECCV2016) [paper]
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[CrowdNet] CrowdNet: A Deep Convolutional Network for Dense Crowd Counting (ACMMM2016) [paper] [code]
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[MCNN] Single-Image Crowd Counting via Multi-Column Convolutional Neural Network (CVPR2016) [paper] [unofficial code: TensorFlow PyTorch]
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[Shang 2016] End-to-end crowd counting via joint learning local and global count (ICIP2016) [paper]
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[RPF] Crowd Density Estimation based on Rich Features and Random Projection Forest (WACV2016) [paper]
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[CS-SLR] Cost-sensitive sparse linear regression for crowd counting with imbalanced training data (ICME2016) [paper]
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[Faster-OHEM-KCF] Deep People Counting with Faster R-CNN and Correlation Tracking (ICME2016) [paper]
2015
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[COUNT Forest] COUNT Forest: CO-voting Uncertain Number of Targets using Random Forest for Crowd Density Estimation (ICCV2015) [paper]
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[Bayesian] Bayesian Model Adaptation for Crowd Counts (ICCV2015) [paper]
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[Zhang 2015] Cross-scene Crowd Counting via Deep Convolutional Neural Networks (CVPR2015) [paper] [code]
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[Wang 2015] Deep People Counting in Extremely Dense Crowds (ACMMM2015) [paper]
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[Fu 2015] Fast crowd density estimation with convolutional neural networks (AI2015) [paper]
2013
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[Idrees 2013] Multi-Source Multi-Scale Counting in Extremely Dense Crowd Images (CVPR2013) [paper]
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[Ma 2013] Crossing the Line: Crowd Counting by Integer Programming with Local Features (CVPR2013) [paper]
2012
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[Chen 2013] Feature mining for localised crowd counting (BMVC2012) [paper]
2010
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[Lempitsky 2010] Learning To Count Objects in Images (NIPS2010) [paper]
2008
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[Chan 2008] Privacy preserving crowd monitoring: Counting people without people models or tracking (CVPR 2008) [paper]
Leaderboard
阅读原文查看完整Leaderboard