首页> 外文期刊>Data >A Systematic Survey of ML Datasets for Prime CV Research Areas—Media and Metadata
【24h】

A Systematic Survey of ML Datasets for Prime CV Research Areas—Media and Metadata

机译:ML数据集的系统调查,用于Prime CV研究区域 - 媒体和元数据

获取原文
       

摘要

The ever-growing capabilities of computers have enabled pursuing Computer Vision through Machine Learning (i.e., MLCV). ML tools require large amounts of information to learn from (ML datasets). These are costly to produce but have received reduced attention regarding standardization. This prevents the cooperative production and exploitation of these resources, impedes countless synergies, and hinders ML research. No global view exists of the MLCV dataset tissue. Acquiring it is fundamental to enable standardization. We provide an extensive survey of the evolution and current state of MLCV datasets (1994 to 2019) for a set of specific CV areas as well as a quantitative and qualitative analysis of the results. Data were gathered from online scientific databases (e.g., Google Scholar, CiteSeerX). We reveal the heterogeneous plethora that comprises the MLCV dataset tissue; their continuous growth in volume and complexity; the specificities of the evolution of their media and metadata components regarding a range of aspects; and that MLCV progress requires the construction of a global standardized (structuring, manipulating, and sharing) MLCV “library”. Accordingly, we formulate a novel interpretation of this dataset collective as a global tissue of synthetic cognitive visual memories and define the immediately necessary steps to advance its standardization and integration.
机译:通过机器学习(即,MLCV),计算机的不断增长的能力使得追求计算机视觉。 ML工具需要大量信息来学习(ML数据集)。这些成本昂贵,但已经收到了关于标准化的注意力。这可以防止对这些资源的合作生产和开发,阻碍无数的协同作用,并阻碍ML研究。没有全局视图存在MLCV数据集组织。获取它是启用标准化的基础。我们对MLCV数据集(1994年至2019年)的演变和当前状态提供了广泛的一套特定简历领域,以及对结果的定量和定性分析。数据来自在线科学数据库(例如,Google Scholar,CiteSeerx)。我们揭示了包含MLCV DataSet组织的异质血清血清;它们的持续增长和复杂性;其媒体和元数据组分的表现的特异性关于一系列方面;此外,MLCV进展需要构建全球标准化(结构化,操纵和共享)MLCV“图书馆”。因此,我们制定了对该数据集集体的新颖解释,作为合成认知视觉记忆的全球组织,并定义了立即进展其标准化和集成的必要步骤。

著录项

相似文献

  • 外文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号