Nexdata/5172_People_Multi_race_Juvenile_and_Multi_pose_Facial_Images
收藏Hugging Face2024-04-16 更新2024-06-12 收录
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---
license: cc-by-nc-nd-4.0
---
## Description
5,172 People - Multi-race Juvenile and Multi-pose Facial Images. This data includes black people, Caucasian people and brown people. Each subject was collected 10 images. (The 10 images include 10 photos in different lighting, different face poses and different collection environments). This data can be used for face recognition related tasks.
For more details, please refer to the link: https://www.nexdata.ai/dataset/1168?source=Huggingface
## Data size
5,172 people, each person has 10 images collected from 5 shooting angles, the total number of images is 51,720
## Race distribution
1,473 black people, 2,185 Caucasian people, 520 brown people and 994 Indians
## Gender distribution
2,684 males, 2,488 females
## Age distribution
219 people aged 3, 224 people aged 4, 222 people aged 5, 451 people aged 6, 534 people aged 7, 527 people aged 8, 540 people aged 9, 533 people aged 10, 743 people aged 11, 802 people aged 12, 376 people aged 13, and 1 person aged 14
## Collecting environment
including indoor and outdoor scenes
## Data diversity
different face poses and races, different ages, different lighting, different collection environments
## Device
cellphone
## Data format
the image data format is .jpg
## Annotation accuracy
the accuracy of labels of face pose, race(country), gender, year and month of birth, collection year are more than 97%
# Licensing Information
Commercial License
提供机构:
Nexdata
原始信息汇总
数据集概述
基本信息
- 数据集名称: 5,172 People - Multi-race Juvenile and Multi-pose Facial Images
- 数据集大小: 包含51,720张图片,涉及5,172人,每人10张图片
- 数据格式: 图片格式为.jpg
- 设备: 使用手机拍摄
- 许可证: cc-by-nc-nd-4.0
详细描述
- 种族分布: 黑人1,473人,白人2,185人,棕色人种520人,印度人994人
- 性别分布: 男性2,684人,女性2,488人
- 年龄分布: 年龄分布从3岁到14岁不等,其中12岁人数最多,为802人
- 收集环境: 包括室内和室外场景
- 数据多样性: 包含不同种族、年龄、光照条件和收集环境下的多种面部姿态
- 标注准确性: 面部姿态、种族、性别、出生年月及收集年份的标注准确率超过97%
应用场景
- 主要用途: 用于面部识别相关任务



