根据数据集介绍,以及数据集划分json

meta_dataset数据集划分为trian/val/test比例为712/158/130;以下为详细的VI版本,ILSVRC2012既IMAGENET-1K的数据集划分入下:

TRAIN:

["n01440764","n01443537","n01484850","n01491361","n01494475","n01496331","n01498041","n01514668","n01514859","n01518878","n01530575","n01531178","n01532829","n01534433","n01537544","n01558993","n01560419","n01580077","n01582220","n01592084","n01601694","n01608432","n01614925","n01616318","n01622779","n01629819","n01630670","n01631663","n01632458","n01632777","n01641577","n01644373","n01644900","n01664065","n01665541","n01667114","n01667778","n01669191","n01675722","n01677366","n01682714","n01685808","n01687978","n01688243","n01689811","n01692333","n01693334","n01694178","n01695060","n01697457","n01698640","n01704323","n01728572","n01728920","n01729322","n01729977","n01734418","n01735189","n01737021","n01739381","n01740131","n01742172","n01744401","n01748264","n01749939","n01751748","n01753488","n01755581","n01756291","n01768244","n01770081","n01770393","n01773157","n01773549","n01773797","n01774384","n01774750","n01775062","n01776313","n01784675","n01795545","n01796340","n01797886","n01798484","n01806143","n01806567","n01807496","n01817953","n01818515","n01819313","n01820546","n01824575","n01828970","n01829413","n01833805","n01843065","n01843383","n01847000","n01855032","n01855672","n01860187","n01871265","n01872401","n01873310","n01877812","n01882714","n01883070","n01910747","n01914609","n01917289","n01924916","n01930112","n01943899","n01944390","n01945685","n01950731","n01955084","n01968897","n01978287","n01978455","n01980166","n01981276","n01983481","n01984695","n01985128","n01986214","n01990800","n02002556","n02002724","n02006656","n02007558","n02009229","n02009912","n02011460","n02012849","n02013706","n02017213","n02018207","n02018795","n02025239","n02027492","n02028035","n02033041","n02037110","n02051845","n02056570","n02058221","n02066245","n02071294","n02074367","n02077923","n02165105","n02165456","n02167151","n02168699","n02169497","n02172182","n02174001","n02177972","n02190166","n02206856","n02219486","n02226429","n02229544","n02231487","n02233338","n02236044","n02256656","n02259212","n02264363","n02268443","n02268853","n02276258","n02277742","n02279972","n02280649","n02281406","n02281787","n02317335","n02319095","n02321529","n02325366","n02326432","n02328150","n02342885","n02346627","n02356798","n02361337","n02363005","n02364673","n02389026","n02391049","n02395406","n02396427","n02397096","n02398521","n02403003","n02408429","n02410509","n02412080","n02415577","n02417914","n02422106","n02422699","n02423022","n02437312","n02437616","n02454379","n02457408","n02480495","n02480855","n02481823","n02483362","n02483708","n02484975","n02486261","n02486410","n02487347","n02488291","n02488702","n02489166","n02490219","n02492035","n02492660","n02493509","n02493793","n02494079","n02497673","n02500267","n02504013","n02504458","n02514041","n02526121","n02536864","n02606052","n02607072","n02640242","n02641379","n02643566","n02655020","n02667093","n02669723","n02687172","n02690373","n02692877","n02699494","n02701002","n02704792","n02727426","n02730930","n02747177","n02769748","n02776631","n02777292","n02782093","n02783161","n02786058","n02788148","n02790996","n02791124","n02791270","n02793495","n02795169","n02797295","n02799071","n02802426","n02804414","n02807133","n02808304","n02808440","n02814533","n02814860","n02815834","n02817516","n02823428","n02823750","n02825657","n02834397","n02835271","n02837789","n02840245","n02843684","n02859443","n02860847","n02865351","n02869837","n02870880","n02871525","n02877765","n02883205","n02892201","n02892767","n02894605","n02895154","n02906734","n02909870","n02916936","n02917067","n02927161","n02930766","n02939185","n02951358","n02951585","n02963159","n02966687","n02971356","n02978881","n02979186","n02980441","n02981792","n02988304","n02992529","n02999410","n03000134","n03000247","n03014705","n03016953","n03018349","n03026506","n03028079","n03032252","n03041632","n03042490","n03045698","n03047690","n03062245","n03063599","n03063689","n03065424","n03089624","n03095699","n03100240","n03109150","n03124043","n03124170","n03125729","n03127747","n03127925","n03131574","n03133878","n03134739","n03141823","n03146219","n03160309","n03179701","n03187595","n03188531","n03201208","n03207743","n03207941","n03216828","n03218198","n03220513","n03223299","n03240683","n03250847","n03255030","n03259280","n03272562","n03290653","n03291819","n03297495","n03314780","n03325584","n03337140","n03344393","n03345487","n03347037","n03355925","n03376595","n03379051","n03384352","n03388043","n03388183","n03388549","n03393912","n03400231","n03404251","n03417042","n03424325","n03443371","n03444034","n03445777","n03445924","n03447447","n03450230","n03457902","n03459775","n03461385","n03476991","n03478589","n03481172","n03482405","n03485794","n03498962","n03527444","n03529860","n03530642","n03534580","n03535780","n03538406","n03584254","n03584829","n03594734","n03594945","n03595614","n03598930","n03599486","n03617480","n03623198","n03630383","n03633091","n03637318","n03649909","n03657121","n03658185","n03661043","n03662601","n03670208","n03673027","n03676483","n03680355","n03690938","n03697007","n03709823","n03710193","n03710637","n03710721","n03717622","n03724870","n03729826","n03733281","n03733805","n03742115","n03743016","n03761084","n03763968","n03764736","n03769881","n03770439","n03770679","n03775071","n03775546","n03776460","n03777568","n03777754","n03781244","n03782006","n03785016","n03786901","n03787032","n03788195","n03788365","n03791053","n03792782","n03792972","n03796401","n03814906","n03825788","n03837869","n03857828","n03866082","n03868242","n03871628","n03873416","n03877472","n03877845","n03887697","n03888257","n03888605","n03891251","n03895866","n03899768","n03902125","n03903868","n03908618","n03908714","n03916031","n03920288","n03924679","n03929855","n03930313","n03930630","n03935335","n03937543","n03938244","n03942813","n03947888","n03950228","n03954731","n03956157","n03958227","n03961711","n03967562","n03970156","n03976467","n03976657","n03977966","n03980874","n03982430","n03983396","n03991062","n03998194","n04005630","n04023962","n04026417","n04033901","n04033995","n04037443","n04039381","n04041544","n04049303","n04065272","n04069434","n04070727","n04081281","n04099969","n04111531","n04116512","n04118538","n04120489","n04125021","n04131690","n04133789","n04136333","n04141327","n04146614","n04147183","n04149813","n04154565","n04192698","n04200800","n04201297","n04204238","n04204347","n04208210","n04209133","n04209239","n04229816","n04235860","n04239074","n04252077","n04252225","n04254120","n04254680","n04254777","n04259630","n04263257","n04264628","n04266014","n04270147","n04273569","n04277352","n04285008","n04296562","n04310018","n04311004","n04325704","n04326547","n04335435","n04336792","n04344873","n04346328","n04347754","n04350905","n04357314","n04366367","n04367480","n04370456","n04371430","n04380533","n04389033","n04392985","n04398044","n04399382","n04404412","n04409515","n04417672","n04418357","n04423845","n04429376","n04435653","n04442312","n04443257","n04447861","n04458633","n04461696","n04462240","n04465501","n04467665","n04476259","n04479046","n04482393","n04483307","n04486054","n04487081","n04493381","n04501370","n04507155","n04509417","n04517823","n04522168","n04523525","n04525038","n04532106","n04532670","n04540053","n04542943","n04548362","n04550184","n04552348","n04553703","n04554684","n04557648","n04560804","n04562935","n04579145","n04584207","n04589890","n04590129","n04591157","n04591713","n04596742","n04597913","n04599235","n04604644","n04606251","n04612504","n04613696","n06596364","n06785654","n06794110","n06874185","n07248320","n07565083","n07579787","n07583066","n07584110","n07590611","n07613480","n07614500","n07615774","n07684084","n07693725","n07695742","n07697313","n07697537","n07711569","n07714571","n07714990","n07715103","n07716358","n07716906","n07717410","n07717556","n07718472","n07718747","n07720875","n07730033","n07734744","n07742313","n07745940","n07747607","n07749582","n07753113","n07753275","n07753592","n07754684","n07760859","n07768694","n07802026","n07831146","n07836838","n07860988","n07871810","n07873807","n07875152","n07880968","n07892512","n07920052","n07930864","n07932039","n09193705","n09229709","n09246464","n09256479","n09288635","n09332890","n09399592","n09421951","n09428293","n09468604","n09472597","n09835506","n10148035","n10565667","n11879895","n11939491","n12057211","n12144580","n12267677","n12620546","n12768682","n12985857","n12998815","n13037406","n13040303","n13044778","n13052670","n13054560","n13133613","n15075141"
]

VAL:

["n02085620","n02085782","n02085936","n02086079","n02086240","n02086646","n02086910","n02087046","n02087394","n02088094","n02088238","n02088364","n02088466","n02088632","n02089078","n02089867","n02089973","n02090379","n02090622","n02090721","n02091032","n02091134","n02091244","n02091467","n02091635","n02091831","n02092002","n02092339","n02093256","n02093428","n02093647","n02093754","n02093859","n02093991","n02094114","n02094258","n02094433","n02095314","n02095570","n02095889","n02096051","n02096177","n02096294","n02096437","n02096585","n02097047","n02097130","n02097209","n02097298","n02097474","n02097658","n02098105","n02098286","n02098413","n02099267","n02099429","n02099601","n02099712","n02099849","n02100236","n02100583","n02100735","n02100877","n02101006","n02101388","n02101556","n02102040","n02102177","n02102318","n02102480","n02102973","n02104029","n02104365","n02105056","n02105162","n02105251","n02105412","n02105505","n02105641","n02105855","n02106030","n02106166","n02106382","n02106550","n02106662","n02107142","n02107312","n02107574","n02107683","n02107908","n02108000","n02108089","n02108422","n02108551","n02108915","n02109047","n02109525","n02109961","n02110063","n02110185","n02110341","n02110627","n02110806","n02110958","n02111129","n02111277","n02111500","n02111889","n02112018","n02112137","n02112350","n02112706","n02113023","n02113186","n02113624","n02113712","n02113799","n02113978","n02114367","n02114548","n02114712","n02114855","n02115641","n02115913","n02116738","n02117135","n02119022","n02119789","n02120079","n02120505","n02123045","n02123159","n02123394","n02123597","n02124075","n02125311","n02127052","n02128385","n02128757","n02128925","n02129165","n02129604","n02130308","n02132136","n02133161","n02134084","n02134418","n02137549","n02138441","n02441942","n02442845","n02443114","n02443484","n02444819","n02445715","n02447366","n02509815","n02510455"
]

TEST:

["n02666196","n02672831","n02676566","n02708093","n02749479","n02787622","n02794156","n02804610","n02841315","n02879718","n02910353","n02948072","n02950826","n02965783","n02966193","n02974003","n02977058","n02992211","n03000684","n03017168","n03075370","n03085013","n03110669","n03126707","n03180011","n03196217","n03197337","n03208938","n03249569","n03271574","n03272010","n03372029","n03394916","n03425413","n03447721","n03452741","n03467068","n03476684","n03483316","n03485407","n03492542","n03494278","n03495258","n03496892","n03532672","n03544143","n03590841","n03602883","n03627232","n03642806","n03666591","n03691459","n03692522","n03706229","n03720891","n03721384","n03733131","n03759954","n03773504","n03793489","n03794056","n03803284","n03804744","n03814639","n03832673","n03838899","n03840681","n03841143","n03843555","n03854065","n03868863","n03874293","n03874599","n03876231","n03884397","n03891332","n03929660","n03933933","n03944341","n03992509","n03995372","n04004767","n04008634","n04009552","n04019541","n04040759","n04044716","n04067472","n04074963","n04086273","n04090263","n04118776","n04127249","n04141076","n04141975","n04152593","n04153751","n04162706","n04179913","n04228054","n04238763","n04243546","n04251144","n04258138","n04265275","n04275548","n04286575","n04311174","n04317175","n04328186","n04330267","n04332243","n04355338","n04355933","n04356056","n04371774","n04372370","n04376876","n04428191","n04456115","n04485082","n04487394","n04505470","n04515003","n04525305","n04536866","n04548280","n04579432","n04592741","n06359193"
]

META-DATASET 数据集类别划分(ILSVRS2012)相关推荐

  1. Waymo Open Dataset 数据集(CVPR 2020)

    Waymo Open Dataset 数据集(CVPR 2020) 摘要 1. 导言 2. 相关工作 3. Waymo开放数据集 3.1 传感器规格 3.2 坐标系 3.3 真值标签 3.4 传感器数 ...

  2. 自定义语义分割数据集(划分训练集与验证集)、并且将一个文件夹下的所有图片的名字存到txt文件

    目录 1.划分训练集.验证集与测试集 2.文件名称保存为txt 3.文件移动 4. 将数据集保存为.pkl格式以及读取.pkl格式文件 我们可以借助Pytorch从文件夹中读取数据集,十分方便,但是P ...

  3. Amazon Review Dataset数据集介绍

    Amazon Review Dataset数据集记录了用户对亚马逊网站商品的评价,是推荐系统的经典数据集,并且Amazon一直在更新这个数据集,根据时间顺序,Amazon数据集可以分成三类: 2013 ...

  4. 行人检测-Caltech Pedestrian Dataset 数据集下载及格式转换

    Caltech Pedestrian Dataset 数据集 加理工(caltech)提供的数据集, 该数据集主要包括 训练集+测试集:seq格式的数据: 行人标签数据:vbb(video bound ...

  5. 用ORBSLAM2运行TUM Dataset数据集Monocular Examples

    参照https://github.com/raulmur/ORB_SLAM2/blob/master/README.md 运行 4. Monocular Examples TUM Dataset 数据 ...

  6. 机器学习 - [源码实现决策树小专题]决策树中子数据集的划分(不允许调用sklearn等库的源代码实现)

    决策树算法中子数据集的划分 推荐: 本文中的代码另外有采用了TypeScript/JavaScript进行实现的版本.作者关注到,谷歌TensorFlow团队近几年在JavaScript语言上动作频频 ...

  7. 公务员考试计算机专业类别,专业!公务员专业类别划分

    原标题:专业!公务员专业类别划分 专业类别 2016河南公务员考试招考公告已出,童鞋们在报考的过程中肯定会遇到我这个专业属于哪个分类.下面图图详细的给大家介绍下: 河南公务员考试职位专业类别 (一)文 ...

  8. DataSet数据集

    填充DataSet数据集 DataSet数据集表示来自一个或多个数据源数据的本地副本,是数据的集合,也可以看作是一个虚拟的表.DataSet对象允许Web窗体半独立于数据源运行.DataSet能够提高 ...

  9. 行人检测——Caltech Pedestrian Dataset 数据集的使用

    Caltech Pedestrian Dataset 数据集的使用 目的: 最近在做智能交通中的行人检测,需要数据集对分类器进行training,选取的数据集为加理工(caltech)提供的http: ...

最新文章

  1. 视频动作定位的分层自关注网络:ICCV2019论文解析
  2. 加班到凌晨三点,就能月薪五万了吗?
  3. 精华自取:神策 2019 数据驱动大会亮点回顾
  4. 42:换汽水瓶ExchangeBottle
  5. Microsoft SQL Server 2008技术内幕:T-SQL查询---------查询优化
  6. 蒙特卡洛粒子滤波定位算法_ROS -- 最简单的自主ACML定位
  7. Qt Creator常问问题FAQ
  8. Angle和XBGoost以及Spark的性能对比
  9. 第五人格pcmac_第五人格:未上线,勘探员已经让庄园内的CP乱了分寸,祭司最绝...
  10. Ubuntu 12.04 root用户登录设置
  11. 基于深度学习的磁环表面缺陷检测算法
  12. 【数字图像处理系列五】图像滤波之空间滤波:图像平滑降噪和图像锐化
  13. 安装Mysql5.7(64位)安装包及教程全
  14. sql server安全管理-新建登录名-sql和混合身份验证模式#windows域和用户名的查找#不是有效的 Windows NT 名称。请给出完整名称: <域\用户名>。
  15. 面试被问到平衡二叉树如何平衡?
  16. Linux Kernel Makefiles
  17. 和老外聊天、发邮件常用英语缩写(超实用)
  18. 超弦计算机,物理学四大神兽——拉普拉斯妖
  19. 利用Tsai-lenz算法实现手眼标定
  20. AndroidQ(10.0) 手机锁屏炫酷充电动画————html方案

热门文章

  1. 模式识别和机器学习有必要学么_【视觉】机器视觉表面缺陷检测综述(下)
  2. python下载钉钉api_DingTalk SDK for Python
  3. oracle p6安装,Primavera P6 Professional 19.12 中文   含详细安装配置教程  修复链接...
  4. U盘修复的大致思路和过程
  5. Linux/Windos搭建安装Kaldi环境实现ASR语音识别
  6. Ubuntu安装mysql步骤
  7. android设置只震动,Android 高版本中无法在后台震动 Ignoring incoming vibration
  8. 图书Hilbert Transform Applications in Mechanical Vibration及源代码
  9. 【POJ No. 2778】DNA 序列 DNA Sequence
  10. 如何给51单片机下载程序