4.7 Article

Random Access Memories: A New Paradigm for Target Detection in High Resolution Aerial Remote Sensing Images

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 27, Issue 3, Pages 1100-1111

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2017.2773199

Keywords

High resolution aerial remote sensing image; target detection; convolutional neural networks; random access memories

Funding

  1. National Natural Science Foundation of China [61671037]
  2. Beijing Natural Science Foundation [4152031]
  3. State Key Laboratory of Virtual Reality Technology and Systems, Beihang University [BUAA-VR-16ZZ-03]
  4. Excellence Foundation of BUAA [2017056]

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We propose a new paradigm for target detection in high resolution aerial remote sensing images under small target priors. Previous remote sensing target detection methods frame the detection as learning of detection model + inference of class-label and bounding-box coordinates. Instead, we formulate it from a Bayesian view that at inference stage, the detection model is adaptively updated to maximize its posterior that is determined by both training and observation. We call this paradigm random access memories (RAM). In this paradigm, Memories can be interpreted as any model distribution learned from training data and random access means accessing memories and randomly adjusting the model at detection phase to obtain better adaptivity to any unseen distribution of test data. By leveraging some latest detection techniques e.g., deep Convolutional Neural Networks and multi-scale anchors, experimental results on a public remote sensing target detection data set show our method outperforms several other state of the art methods. We also introduce a new data set LEarning, VIsion and Remote sensing laboratory (LEVIR), which is one order of magnitude larger than other data sets of this field. LEVIR consists of a large set of Google Earth images, with over 22 k images and 10 k independently labeled targets. RAM gives noticeable upgrade of accuracy (an mean average precision improvement of 1% similar to 4%) of our baseline detectors with acceptable computational overhead.

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