[{"@type":"PropertyValue","name":"Data size","value":"759,429 images, 5,796,265 bounding boxes"},{"@type":"PropertyValue","name":"Collecting environment","value":"underground parking lot, surface parking lot, entrance and exit gates, outdoor roads (highways, urban roads, etc.)"},{"@type":"PropertyValue","name":"Data diversity","value":"different surveillance scenes, different time periods, different cameras, various vehicle distributions (crowded, sparse)"},{"@type":"PropertyValue","name":"Device","value":"surveillance camera, cellphone (a few)"},{"@type":"PropertyValue","name":"Collecting angle","value":"looking down angle, eye-level angle"},{"@type":"PropertyValue","name":"Collecting time","value":"day, night"},{"@type":"PropertyValue","name":"Data format","value":"the image data format is .jpg, the annotation file format is .json"},{"@type":"PropertyValue","name":"Annotation content","value":"vehicles rectangular bounding boxes and vehicle type attributes were annotated"},{"@type":"PropertyValue","name":"Accuracy","value":"the bounding box of vehicle is qualified when the deviation is not more than 3 pixels, and the qualified rate of the bounding box shall not be lower than 97%"}]
{"id":1219,"datatype":"1","titleimg":"https://res.datatang.com/asset/productNew/APY230227001.png?Expires=2007353723&OSSAccessKeyId=LTAI5tQwXnJZbubgVfVa1ep9&Signature=ytijv3FDt9unWjLxAY%2B8Vvn4usE%3D","type1":"147","type1str":null,"type2":"147","type2str":null,"dataname":"759,429 Images - Vehicles Detection Data in Surveillance Scenes","datazy":[{"title":"Data size","value":"759,429 images, 5,796,265 bounding boxes"},{"title":"Collecting environment","value":"underground parking lot, surface parking lot, entrance and exit gates, outdoor roads (highways, urban roads, etc.)"},{"title":"Data diversity","value":"different surveillance scenes, different time periods, different cameras, various vehicle distributions (crowded, sparse)"},{"title":"Device","value":"surveillance camera, cellphone (a few)"},{"title":"Collecting angle","value":"looking down angle, eye-level angle"},{"title":"Collecting time","value":"day, night"},{"title":"Data format","value":"the image data format is .jpg, the annotation file format is .json"},{"title":"Annotation content","value":"vehicles rectangular bounding boxes and vehicle type attributes were annotated"},{"title":"Accuracy","value":"the bounding box of vehicle is qualified when the deviation is not more than 3 pixels, and the qualified rate of the bounding box shall not be lower than 97%"}],"datatag":"Vehicles,Surveillance Scenes","technologydoc":null,"downurl":null,"datainfo":"","standard":null,"dataylurl":null,"flag":null,"publishtime":null,"createby":null,"createtime":null,"ext1":null,"samplestoreloc":null,"hosturl":null,"datasize":null,"industryPlan":null,"keyInformation":"","samplePresentation":["mp4",""],"officialSummary":"759,429 Images - Vehicles Detection Data in Surveillance Scenes. The collection scenes include underground parking lot, surface parking lot, entrance and exit gates and outdoor roads (highways, urban roads, etc.). The data includes different surveillance scenes, different time periods, different cameras and various vehicle distributions (crowded, sparse). In this dataset, vehicles rectangular bounding boxes and vehicle type attributes were annotated. The data can be used for tasks such as vehicles detection in surveillance scenes.","dataexampl":"","datakeyword":["Vehicle detection data"," intelligent monitoring data"," security data"],"isDelete":null,"ids":null,"idsList":null,"datasetCode":null,"productStatus":null,"tagTypeEn":"Task Type,Modalities","tagTypeZh":null,"website":null,"samplePresentationList":null,"datazyList":null,"keyInformationList":null,"dataexamplList":null,"bgimg":null,"datazyScriptList":null,"datakeywordListString":null,"sourceShowPage":"computer","BGimg":"","voiceBg":["/shujutang/static/image/comm/audio_bg.webp","/shujutang/static/image/comm/audio_bg2.webp","/shujutang/static/image/comm/audio_bg3.webp","/shujutang/static/image/comm/audio_bg4.webp","/shujutang/static/image/comm/audio_bg5.webp"],"single":"yes"}
[{"@type":"VideoObject","embedUrl":"p"},{"@type":"VideoObject"}]
759,429 Images - Vehicles Detection Data in Surveillance Scenes
Vehicle detection data
intelligent monitoring data
security data
759,429 Images - Vehicles Detection Data in Surveillance Scenes. The collection scenes include underground parking lot, surface parking lot, entrance and exit gates and outdoor roads (highways, urban roads, etc.). The data includes different surveillance scenes, different time periods, different cameras and various vehicle distributions (crowded, sparse). In this dataset, vehicles rectangular bounding boxes and vehicle type attributes were annotated. The data can be used for tasks such as vehicles detection in surveillance scenes.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
759,429 images, 5,796,265 bounding boxes
Collecting environment
underground parking lot, surface parking lot, entrance and exit gates, outdoor roads (highways, urban roads, etc.)
Data diversity
different surveillance scenes, different time periods, different cameras, various vehicle distributions (crowded, sparse)
Device
surveillance camera, cellphone (a few)
Collecting angle
looking down angle, eye-level angle
Collecting time
day, night
Data format
the image data format is .jpg, the annotation file format is .json
Annotation content
vehicles rectangular bounding boxes and vehicle type attributes were annotated
Accuracy
the bounding box of vehicle is qualified when the deviation is not more than 3 pixels, and the qualified rate of the bounding box shall not be lower than 97%
Sample
Recommended Dataset
Tell Us Your Special Needs
ae5963a7-299d-4e02-b3d8-836c82da303a