Dataset of Unconstrained Large Gathering Images for Person Identification and Tracking
收藏Figshare2022-07-19 更新2026-04-08 收录
下载链接:
https://figshare.com/articles/dataset/Dataset_of_Unconstrained_Large_Gathering_Images_for_Person_Identification_and_Tracking/19775152/1
下载链接
链接失效反馈官方服务:
资源简介:
This paper presents a large gathering dataset of images extracted from publicly filmed 1 videos by 24 cameras installed in the premises of Al Nabvi mosque, Madinah, Saudi Arabia. This 2 dataset consists of both raw and processed images reflecting a highly challenging and unconstraint 3 environment. The methodology for the development of the dataset consists of four core phases, 1) 4 Acquisition of videos, 2) Extraction of frames, 3) Localization of face regions, and 4) Cropping and 5 resizing of detected face regions. The raw images in the dataset consist of a total of 4613 frames 6 obtained from video sequences. The processed images in the dataset consist of the face regions of 7 250 persons which were extracted from raw data images to ensure the authenticity of the presented 8 data. The dataset further consists of 8 images corresponding to each of the 250 subjects (persons) for 9 a total of 2000 images. The dataset portrays a highly unconstrained and challenging environment, 10 where human faces of varying sizes and pixel quality (resolution) can be observed. Since the face 11 regions in video sequences are severely degraded due to various unavoidable factors, it can be used 12 as a benchmark to test and evaluate face detection and recognition algorithms for research purposes. 13 We have also gathered and displayed records of the presence of subjects who appear in presented 14 frames; in a temporal context. This can also be used as a temporal benchmark for tracking, finding 15 persons, activity monitoring, and crowd counting in large crowd scenarios
提供机构:
Ashraf, Muhammad; Noor, Fazal; Nadeem, Adnan; Rizwan, Kashif; Alzahrani, Ali; Qadeer, Nauman; Hussain Abbasi, Qammer; Mehmood, Amir
创建时间:
2022-05-16



