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{"id":1428,"datatype":"1","titleimg":"/shujutang/static/image/index/datatang_tuxiang_default.webp","type1":"147","type1str":null,"type2":"147","type2str":null,"dataname":"12,352 Images Data Of Moving Things","datazy":[{"title":"Data size","value":"12,352 images"},{"title":"Collecting environment","value":"including streets, communities, corridors, etc."},{"title":"Data diversity","value":"multiple scenes, different time periods"},{"title":"Device","value":"surveillance camera"},{"title":"Collecting time","value":"day, night"},{"title":"Data format","value":".jpg, .json, .xml"}],"datatag":"Human behavior,Multiple scenarios,Multiple time periods","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":[["jpg","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000003.jpg?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=DAeS0gm6hl%2FqNL64mbT7iW%2Bk3NQ%3D","/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000003.jpg",""],["jpg","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000005.jpg?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=PKSBIe67er%2BEnFzyc9guGuRf8%2B0%3D","/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000005.jpg",""],["jpg","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000001.jpg?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=A7ZTf%2FU9G9SOzS1DtWGZt9L0Gz0%3D","/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000001.jpg",""]],"officialSummary":"12,352 Images Data Of Moving Things,this data set is used for object handling detection. It contains multiple scenes. The collection angle is a bird's eye view. All pedestrians appearing in the picture are marked. This data set can be used to identify people carrying objects in monitoring scenes such as parks, warehouses, and streets.","dataexampl":"","datakeyword":["Human behavior"," moving objects"," monitoring perspective"," outdoor scenes"," multiple scenes"," multiple time periods"],"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":"no","firstList":[["jpg","https://bj-oss-datatang-03.oss-cn-beijing.aliyuncs.com/filesInfoUpload/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000002.jpg?Expires=4102329599&OSSAccessKeyId=LTAI8NWs2pDolLNH&Signature=QKtNOdrdQXjDdRnfRUGwQaWZwKg%3D","/data/apps/damp/temp/ziptemp/APY240115004_demo1710928819980/0000002.jpg",""]]}
12,352 Images Data Of Moving Things,this data set is used for object handling detection. It contains multiple scenes. The collection angle is a bird's eye view. All pedestrians appearing in the picture are marked. This data set can be used to identify people carrying objects in monitoring scenes such as parks, warehouses, and streets.
This is a paid datasets for commercial use, research purpose and more. Licensed ready made datasets help jump-start AI projects.
Specifications
Data size
12,352 images
Collecting environment
including streets, communities, corridors, etc.
Data diversity
multiple scenes, different time periods
Device
surveillance camera
Collecting time
day, night
Data format
.jpg, .json, .xml
Sample
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