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RecceMan~?: An Interactive Recognition Assistance for Image-based Reconnaissance - Synergistic Effects of Human perception and computational methods for Object Recognition, Identification and Infrastructure Analysis

机译:Recceman〜?:基于图像的图像侦察的互动识别援助 - 人类感知和对象识别,识别和基础设施分析的协同效应和计算方法

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This paper introduces an interactive recognition assistance system for imaging reconnaissance. This system supports aerial image analysts on missions during two main tasks: Object recognition and infrastructure analysis. Object recognition concentrates on the classification of one single object. Infrastructure analysis deals with the description of the components of an infrstructure and the recognition of the infrastructure type (e.g. military airfield). Based on satellite or aerial images, aerial image analysts are able to extract single object features and thereby recognize different object types. It is one of the most challenging tasks in the imaging reconnaissance. Currently, there are no high potential ATR (automatic target recognition) applications available, as consequence the human observer cannot be replaced entirely. State-of-the-art ATR applications cannot assume in equal measure human perception and interpretation. Why is this still such a critical issue? First, cluttered and noisy images make it difficult to automatically extract, classify and identify object types. Second, due to the changed warfare and the rise of asymmetric threats it is nearly impossible to create an underlying data set containing all features, objects or infrastructure types. Many other reasons like environmental parameters or aspect angles compound the application of ATR supplementary. Due to the lack of suitable ATR procedures, the human factor is still important and so far irreplaceable. In order to use the potential benefits of the human perception and computational methods in a synergistic way, both are unified in an interactive assistance system. RecceMan~? (Reconnaissance Manual) offers two different modes for aerial image analysts on missions: the object recognition mode and the infrastructure analysis mode. The aim of the object recognition mode is to recognize a certain object type based on the object features that originated from the image signatures. The infrastructure analysis mode pursues the goal to analyze the function of the infrastructure. The image analyst extracts visually certain target object signatures, assigns them to corresponding object features and is finally able to recognize the object type. The system offers him the possibility to assign the image signatures to features given by sample images. The underlying data set contains a wide range of objects features and object types for different domains like ships or land vehicles. Each domain has its own feature tree developed by aerial image analyst experts. By selecting the corresponding features, the possible solution set of objects is automatically reduced and matches only the objects that contain the selected features. Moreover, we give an outlook of current research in the field of ground target analysis in which we deal with partly automated methods to extract image signatures and assign them to the corresponding features. This research includes methods for automatically determining the orientation of an object and geometric features like width and length of the object. This step enables to reduce automatically the possible object types offered to the image analyst by the interactive recognition assistance system.
机译:本文介绍了用于成像侦察的互动识别辅助系统。该系统在两个主要任务期间支持关于任务的空中图像分析师:对象识别和基础设施分析。对象识别集中在一个对象的分类上。基础设施分析处理了基础设施的组件的描述和基础设施类型的识别(例如军事机场)。基于卫星或空中图像,空中图像分析师能够提取单个对象特征,从而识别不同的对象类型。它是成像侦察中最具挑战性的任务之一。目前,没有高潜在的ATR(自动目标识别)应用,因此人类观察者不能完全更换。最先进的ATR应用程序不能以平等的衡量标准观察人类的感知和解释。为什么这仍然是一个重要的问题?首先,杂乱和嘈杂的图像使得难以自动提取,分类和识别对象类型。其次,由于变化的战争和不对称威胁的兴起,几乎不可能创建包含所有功能,对象或基础架构类型的底层数据集。许多其他原因如环保参数或方面角度化合物复合ATR补充剂的应用。由于缺乏合适的ATR程序,人类因素仍然是重要的,到目前为止不可替代。为了利用人类感知和计算方法的潜在益处,在协同方式中,两者都在互动辅助系统中统一。 Recceman〜? (侦察手册)为特派团的空中图像分析师提供两种不同模式:对象识别模式和基础设施分析模式。对象识别模式的目的是基于源自图像签名的对象特征来识别某些对象类型。基础设施分析模式追求分析基础设施功能的目标。图像分析器在视觉上提取某些目标对象签名,将它们分配给相应的对象特征,最终能够识别对象类型。该系统为他提供了将图像签名分配给样本图像给出的特征。底层数据集包含各种域的各种对象功能和物体类型,如船舶或陆车辆等不同域。每个域都有自己的特征树,由空中图像分析师专家开发。通过选择相应的功能,可以自动减少可能的对象集并仅匹配包含所选功能的对象。此外,我们在地面目标分析领域提供了目前研究的前景,我们处理部分自动化方法来提取图像签名并将它们分配给相应的功能。该研究包括用于自动确定对象和几何特征的方向的方法,如对象的宽度和长度。该步骤通过交互式识别辅助系统可以自动减少为图像分析器提供的可能对象类型。

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