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M-FCN: Effective Fully Convolutional Network-Based Airplane Detection Framework
51
Citations
13
References
2017
Year
Convolutional Neural NetworkEngineeringMachine LearningImage ClassificationImage AnalysisPattern RecognitionMachine VisionAutomatic Target RecognitionObject DetectionAirplane DetectionComputer EngineeringComputer ScienceMedical Image ComputingDeep LearningOptical Image RecognitionConvolutional NetworkComputer VisionRegion ProposalAerospace Engineering
Airplane detection is a challenging problem in complex remote sensing imaging. In this letter, an effective airplane detection framework called Markov random field-fully convolutional network (M-FCN) is proposed. The M-FCN uses a cascade strategy that consists of an FCN-based coarse candidate extraction stage, a multi-Markov random field (multi-MRF)-based region proposal (RP) generation stage, and a final classification stage. In the first stage, the FCN model is trained to be sensitive to airplanes, and a coarse candidate map is generated. This model is scale-, direction-, and color-invariant and does not require many training examples. After the first stage, the coarse candidate map is used as the initial labeling field for a multi-MRF algorithm, and RPs are generated according to the multi-MRF output. This RP-generating strategy can yield more accurate locations with fewer RPs. In the last stage, a convolutional neural network-based classifier is used to improve the precision of the entire framework. Experiments show that the M-FCN has high precision, recall, and location accuracy.
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