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  4. Systematic evaluation of deep learning based detection frameworks for aerial imagery
 
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2018
Conference Paper
Title

Systematic evaluation of deep learning based detection frameworks for aerial imagery

Abstract
Object detection in aerial imagery is crucial for many applications in the civil and military domain. In recent years, deep learning based object detection frameworks significantly outperformed conventional approaches based on hand-crafted features on several datasets. However, these detection frameworks are generally designed and optimized for common benchmark datasets, which considerably differ from aerial imagery especially in object sizes. As already demonstrated for Faster R-CNN, several adaptations are necessary to account for these differences. In this work, we adapt several state-of-the-art detection frameworks including Faster R-CNN, R-FCN, and Single Shot MultiBox Detector (SSD) to aerial imagery. We discuss adaptations that mainly improve the detection accuracy of all frameworks in detail. As the output of deeper convolutional layers comprise more semantic information, these layers are generally used in detection frameworks as feature map to locate and classify objects. However, the resolution of these feature maps is insufficient for handling small object instances, which results in an inaccurate localization or incorrect classification of small objects. Furthermore, state-of-the-art detection frameworks perform bounding box regression to predict the exact object location. Therefore, so called anchor or default boxes are used as reference. We demonstrate how an appropriate choice of anchor box sizes can considerably improve detection performance. Furthermore, we evaluate the impact of the performed adaptations on two publicly available datasets to account for various ground sampling distances or differing backgrounds. The presented adaptations can be used as guideline for further datasets or detection frameworks.
Author(s)
Sommer, L.
Steinmann, L.
Schumann, Arne  
Beyerer, Jürgen  
Mainwork
Automatic Target Recognition XXVIII  
Conference
Conference "Automatic Target Recognition" 2018  
Conference "Defense and Security" 2018  
Conference "Defense and Commercial Sensing" (DCS) 2018  
DOI
10.1117/12.2304768
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Keyword(s)
  • deep learning

  • vehicle detection

  • aerial imagery

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