Representation Learning for Contextual Object and Region Detection in Remote Sensing

Orhan Firat, G. Can, F. Yarman-Vural
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引用次数: 24

Abstract

The performance of object recognition and classification on remote sensing imagery is highly dependent on the quality of extracted features, amount of labelled data and the priors defined for contextual models. In this study, we examine the representation learning opportunities for remote sensing. First we attacked localization of contextual cues for complex object detection using disentangling factors learnt from a small amount of labelled data. The complex object, which consists of several sub-parts is further represented under the Conditional Markov Random Fields framework. As a second task, end-to-end target detection using convolutional sparse auto-encoders (CSA) using large amount of unlabelled data is analysed. Proposed methodologies are tested on complex airfield detection problem using Conditional Random Fields and recognition of dispersal areas, park areas, taxi routes, airplanes using CSA. The method is also tested on the detection of the dry docks in harbours. Performance of the proposed method is compared with standard feature engineering methods and found competitive with currently used rule-based and supervised methods.
遥感中上下文目标和区域检测的表示学习
遥感图像的目标识别和分类性能高度依赖于提取特征的质量、标记数据的数量和为上下文模型定义的先验。在本研究中,我们研究了遥感表征学习的机会。首先,我们使用从少量标记数据中学习的解纠缠因素来攻击复杂目标检测的上下文线索定位。在条件马尔可夫随机场框架下进一步表示由多个子部分组成的复杂对象。作为第二项任务,分析了使用大量未标记数据的卷积稀疏自编码器(CSA)进行端到端目标检测。利用条件随机场对复杂的机场检测问题进行了测试,并利用CSA对分散区域、公园区域、出租车路线和飞机进行了识别。并在港口干船坞的检测中进行了试验。将该方法的性能与标准特征工程方法进行了比较,并与目前使用的基于规则和监督的方法进行了比较。
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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