video analysis:crowd counting

   本科毕设:监控视频下的人数统计

   核心点:crowd counting

   目前主要的实现方法: counting by detection,counting by clustering, and counting by regression.

           counting by detection:

                       解决思路:detection+tracking

                       主要问题:detector在复杂高密度人群中性能差;time-consuming

           counting by clustering:

                       解决思路:motion cluster

                       主要问题:要求视频帧率足够支持motion分析;

          counting by regression:

                       解决思路:将低维特征映射到people count

                       主要问题:映射的精度;

       综上:counting by detection是比较直观的做法,但跑了demo之后结果不甚满意;目前我比较中意 counting by regression的解决思路,也在着手阅读相关的论文。

  测试数据:

     目前下载的几个数据库预览:

                  UCSD行人                                    PETS2009                        PETS2002                                  mall

       

      UCSD行人库和PETS2009均为室外库,分辨率较好,直接跑human detector效果也是稳定的;

      PETS2002,mall为室内库,分辨率较差,直接跑human detector(RCNN)效果比较差;【可能下周能从项目上拿到其他的零售店的video】

      现在看的论文很多都是针对特定场景训练的,目前也不能做跨场景的,所以尽快确定场景,才能尽快开始工作。

 state of art:ICCV15(还没有调研完全)

           

     测试标准: mean absolute error (mae), mean squared error (mse), and mean deviation error (mde) 

 相关工作:

            •ICCV15:Bayesian Model Adaptation for Crowd Counts
            • Trans on image processing12:Counting people with low-level features and Bayesian regression
            •ICCV09:Bayesian Poisson regression for crowd counting
            •Cvpr08:Privacy preserving crowd monitoring: Counting people without people models or tracking
            •AVSS12:People Count Estimation In Small Crowds
            •ICCV13:From Semi-Supervised to Transfer Counting of Crowds
            •ICCV15:COUNT Forest: CO-voting Uncertain Number of Targets using Random Forest for Crowd Density Estimation
            •ICIP14:CROWD ANALYSIS IN NON-STATIC CAMERAS USING FEATURE TRACKING AND MULTI-PERSON DENSITY
            •CVPR15:Person Count Localization in Videos from Noisy Foreground and Detections
            •CVPR15:Cross-scene Crowd Counting via Deep Convolutional Neural Networks
            •CVPR13:Cumulative Attribute Space for Age and Crowd Density Estimation
            •BMVC12:Feature Mining for Localised Crowd Counting
 相关研究组:
            https://scholar.google.com/citations?hl=en&user=Fykyo9gAAAAJ&view_op=list_works&sortby=pubdate
            http://personal.ie.cuhk.edu.hk/~ccloy/
           
原文地址:https://www.cnblogs.com/xy2012/p/5092206.html