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The PASCAL Visual Object Classes Challenge: A Retrospective

机译:PASCAL视觉对象类挑战:回顾

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The Pascal Visual Object Classes (VOC) challenge consists of two components: (i) a publicly available dataset of images together with ground truth annotation and standardised evaluation software; and (ii) an annual competition and workshop. There are five challenges: classification, detection, segmentation, action classification, and person layout. In this paper we provide a review of the challenge from 2008-2012. The paper is intended for two audiences: algorithm designers, researchers who want to see what the state of the art is, as measured by performance on the VOC datasets, along with the limitations and weak points of the current generation of algorithms; and, challenge designers, who want to see what we as organisers have learnt from the process and our recommendations for the organisation of future challenges. To analyse the performance of submitted algorithms on the VOC datasets we introduce a number of novel evaluation methods: a bootstrapping method for determining whether differences in the performance of two algorithms are significant or not; a normalised average precision so that performance can be compared across classes with different proportions of positive instances; a clustering method for visualising the performance across multiple algorithms so that the hard and easy images can be identified; and the use of a joint classifier over the submitted algorithms in order to measure their complementarity and combined performance. We also analyse the community's progress through time using the methods of Hoiem et al. (Proceedings of European Conference on Computer Vision, 2012) to identify the types of occurring errors. We conclude the paper with an appraisal of the aspects of the challenge that worked well, and those that could be improved in future challenges.
机译:Pascal视觉对象类(VOC)挑战包括两个部分:(i)公开可用的图像数据集,以及地面实况注释和标准化评估软件; (ii)年度竞赛和讲习班。存在五个挑战:分类,检测,细分,动作分类和人员布局。在本文中,我们回顾了2008-2012年的挑战。本文面向两个受众:算法设计师,研究人员,他们希望了解通过VOC数据集的性能衡量的最新技术水平,以及当前算法的局限性和弱点;挑战设计师,他们希望了解我们作为组织者从整个过程中学到的知识以及我们对未来挑战的组织建议。为了分析VOC数据集上提交的算法的性能,我们引入了许多新颖的评估方法:一种用于确定两种算法的性能差异是否显着的自举方法;归一化的平均精度,以便可以在具有不同比例的肯定实例的类之间比较性能;一种用于跨多种算法可视化性能的聚类方法,以便可以识别出硬和容易的图像;以及对提交的算法使用联合分类器,以衡量其互补性和综合性能。我们还使用Hoiem等人的方法分析了社区随着时间的进步。 (欧洲计算机视觉会议论文集,2012年)以识别发生的错误的类型。我们在总结本文时会评估行之有效的挑战方面,以及在未来挑战中可以改进的方面。

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