All Projects → shijieS → People Counting Dataset

shijieS / People Counting Dataset

the large-scale data set for people counting (LOI counting)

Projects that are alternatives of or similar to People Counting Dataset

Sketchyscene
SketchyScene: Richly-Annotated Scene Sketches. (ECCV 2018)
Stars: ✭ 74 (+100%)
Mutual labels:  dataset, scene
Okutama Action
Okutama-Action: An Aerial View Video Dataset for Concurrent Human Action Detection
Stars: ✭ 36 (-2.7%)
Mutual labels:  dataset
React Native Magic Move
Create magical move transitions between scenes in react-native 🐰🎩✨
Stars: ✭ 909 (+2356.76%)
Mutual labels:  scene
Elastic data
Elasticsearch datasets ready for bulk loading
Stars: ✭ 30 (-18.92%)
Mutual labels:  dataset
Aframe Preloader Component
A preloading bar that automatically displays while scene assets load.
Stars: ✭ 27 (-27.03%)
Mutual labels:  scene
Wikisql
A large annotated semantic parsing corpus for developing natural language interfaces.
Stars: ✭ 965 (+2508.11%)
Mutual labels:  dataset
Tedsds
Apache Spark - Turbofan Engine Degradation Simulation Data Set example in Apache Spark
Stars: ✭ 14 (-62.16%)
Mutual labels:  dataset
Human3.6m downloader
Human3.6M downloader by Python
Stars: ✭ 37 (+0%)
Mutual labels:  dataset
Dataconfs
A list of conferences connected with data worldwide.
Stars: ✭ 36 (-2.7%)
Mutual labels:  dataset
Day night dataset list
Collecting a list of dataset with day and night annotations
Stars: ✭ 30 (-18.92%)
Mutual labels:  dataset
Dns Lots Of Lookups
dnslol is a command line tool for performing lots of DNS lookups.
Stars: ✭ 30 (-18.92%)
Mutual labels:  dataset
Jsut Lab
HTS-style full-context labels for JSUT v1.1
Stars: ✭ 28 (-24.32%)
Mutual labels:  dataset
Multi Plier
An unsupervised transfer learning approach for rare disease transcriptomics
Stars: ✭ 33 (-10.81%)
Mutual labels:  dataset
Mlthaku
Información sobre MLTHaKu/Information about MLTHaKu
Stars: ✭ 27 (-27.03%)
Mutual labels:  scene
Pts
Quantized Mesh Terrain Data Generator and Server for CesiumJS Library
Stars: ✭ 36 (-2.7%)
Mutual labels:  dataset
Covid 19 Api
Covid-19 Virus Data API from Johns Hopkins CSSE
Stars: ✭ 15 (-59.46%)
Mutual labels:  dataset
Feversymmetric
Symmetric evaluation set based on the FEVER (fact verification) dataset
Stars: ✭ 29 (-21.62%)
Mutual labels:  dataset
Rstudioconf tweets
🖥 A repository for tracking tweets about rstudio::conf
Stars: ✭ 32 (-13.51%)
Mutual labels:  dataset
Dstc7 Audio Visual Scene Aware Dialog Avsd Challenge
Stars: ✭ 37 (+0%)
Mutual labels:  scene
Landsat8 scene calculator
Creates NDVI, SAVI, RBG, NIR, short wave infrared, agriculture, geology, and bathymetric GeoTIFF files using Landsat8 imagery.
Stars: ✭ 37 (+0%)
Mutual labels:  scene

People Counting Dataset (PCDS)

The purpose of people counting dataset is to count the number of people passing through a specified scene. In this dataset, we published a set of videos recorded in the entrance of bus scene by Kinect V1 camera. Each depth video has its corresponding RGB video. And each pair of videos is labeled to indicate the number of pedestrians passing through the scene.

  • This dataset contains 5,464 pair of videos, including depth video, and color video. And total up to 10,908 videos.
  • Total up to about 20,908 people passing through the scene
  • These videos is recorded in the entrance of buses.
  • The camera is mounted at the top of the entrance of buses.

Dataset

The dataset is available at BaiYun OR Google Drive.

Classfication

These videos are categoried by 4 sub-categories: N+C+, N+C-, N-C+, N-C-, according to the sunlight and crowed, as shown in the following table.

N+C+ N+C- N-C+ N-C-
sunlight strong strong weak weak
crowed yes no yes no

There are total up to 5,464 videos in this dataset. The detail number of people entering and exiting the bus in each category can be referred from the following table.

N+C+ N+C- N-C+ N-C-
entering 937 616 5427 2704
exiting 1149 668 6647 2760
total 2086 1284 12074 5464

Demo

N-C+

N-C+ N-C+

N-C-

N+C+

N+C-

Dataset Structure

The structure of these videos is illustrated in the following figure.

There are 30 scene in the PCDS. And each scene is named by the the following format:

BUS_DATETIME_[front, back]

where, BUS is the bus number, DATETIME is the reocred date, [front, back] indicates wheter the video is recorded in front entrance of the bus or not. For example the scene name 25_20160411_front means we record the video at the front door of 25 bus at 04, Nov. 2016.

The following figure shows the folder structure of the PCDS.

Label Format

In each scene directory (i.e. 25_2016_0410_back), there is a label file which is named as "label.txt". This label file contains both camera extrinsic parameters and the number of people entering/exiting the bus for each video. The following figure illustrate the demo of label file.

The first 4 lines is the camera extrinsic parameter, which is 4x3 matrix. The followed lines are the number of people passing through the scene whose format is shown as follows:

DepthVideoName, EnteringNumber, ExitingNumber, VideoType

DepthVideoName: the depth video name EnteringNumber: the number of people entering the bus ExitingNumber: the number of people exiting the bus VideoType: the video type. There are 4 video types represented by the index (0: N-C-, 1: N-C+, 2: N+C-, 3: N+C+).

Recording Condition

These videos are recorded by Kinect V1, the configuration of camera is illustrated in the following. The camera in mounted in the top of the entrance and has a pitch angle. People passes through the bus door. The task is to count these pedestrian (entering or existing)

Notice

We only focus on the deth video and the color video is an accessory. We cannot guarantee the synchronization of color video and depth video.

Citation

If you use this dataset, it is necessary to cite the following paper:

@article{sun2019benchmark,
  title={Benchmark data and method for real-time people counting in cluttered scenes using depth sensors},
  author={Sun, ShiJie and Akhtar, Naveed and Song, HuanSheng and Zhang, ChaoYang and Li, JianXin and Mian, Ajmal},
  journal={IEEE Transactions on Intelligent Transportation Systems},
  year={2019},
  publisher={IEEE}
}

License

The datasets provided on this page are published under the Creative Commons Attribution-NonCommercial-ShareAlike 3.0 License . This means that you must attribute the work in the manner specified by the authors, you may not use this work for commercial purposes and if you alter, transform, or build upon this work, you may distribute the resulting work only under the same license. If you are interested in commercial usage you can contact us for further options.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].