ROBIN: a platform for evaluating automatic target recognition algorithms: I. Overview of the project and presentation of the SAGEM DS competition

D. Duclos, J. Lonnoy, Q. Guillerm, F. Jurie, S. Herbin, E. D'Angelo
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引用次数: 2

Abstract

The last five years have seen a renewal of Automatic Target Recognition applications, mainly because of the latest advances in machine learning techniques. In this context, large collections of image datasets are essential for training algorithms as well as for their evaluation. Indeed, the recent proliferation of recognition algorithms, generally applied to slightly different problems, make their comparisons through clean evaluation campaigns necessary. The ROBIN project tries to fulfil these two needs by putting unclassified datasets, ground truths, competitions and metrics for the evaluation of ATR algorithms at the disposition of the scientific community. The scope of this project includes single and multi-class generic target detection and generic target recognition, in military and security contexts. From our knowledge, it is the first time that a database of this importance (several hundred thousands of visible and infrared hand annotated images) has been publicly released. Funded by the French Ministry of Defence (DGA) and by the French Ministry of Research, ROBIN is one of the ten Techno-vision projects. Techno-vision is a large and ambitious government initiative for building evaluation means for computer vision technologies, for various application contexts. ROBIN's consortium includes major companies and research centres involved in Computer Vision R&D in the field of defence: Bertin Technologies, CNES, ECA, DGA, EADS, INRIA, ONERA, MBDA, SAGEM, THALES. This paper, which first gives an overview of the whole project, is focused on one of ROBIN's key competitions, the SAGEM Defence Security database. This dataset contains more than eight hundred ground and aerial infrared images of six different vehicles in cluttered scenes including distracters. Two different sets of data are available for each target. The first set includes different views of each vehicle at close range in a "simple" background, and can be used to train algorithms. The second set contains many views of the same vehicle in different contexts and situations simulating operational scenarios.
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ROBIN:一个评估自动目标识别算法的平台:1 .项目概述和SAGEM DS竞赛的介绍
在过去的五年里,自动目标识别应用得到了更新,这主要是因为机器学习技术的最新进展。在这种情况下,大量的图像数据集对于训练算法和评估算法都是必不可少的。事实上,最近识别算法的激增,通常应用于略有不同的问题,使他们通过干净的评估活动进行比较是必要的。ROBIN项目试图通过将未分类的数据集、真实情况、竞争和评估ATR算法的指标放在科学界的处置中来满足这两个需求。该项目的范围包括军事和安全领域的单类和多类通用目标检测和通用目标识别。据我们所知,这是第一次公开发布如此重要的数据库(数十万张可见光和红外手工注释图像)。由法国国防部(DGA)和法国研究部资助,ROBIN是十大技术视觉项目之一。Techno-vision是一项庞大而雄心勃勃的政府计划,旨在为各种应用环境的计算机视觉技术建立评估手段。ROBIN的联盟包括涉及国防领域计算机视觉研发的主要公司和研究中心:Bertin Technologies、CNES、ECA、DGA、EADS、INRIA、ONERA、MBDA、SAGEM、THALES。本文首先概述了整个项目,重点关注ROBIN的主要竞争项目之一,萨基姆国防安全数据库。该数据集包含六种不同车辆在包括干扰物在内的混乱场景中的800多张地面和空中红外图像。每个目标都有两组不同的数据。第一组包括在“简单”背景下近距离观察每辆车的不同视角,可用于训练算法。第二组包含同一车辆在不同环境和情况下的许多视图,模拟操作场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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