Publication | Open Access
Object level HSI-LIDAR data fusion for automated detection of difficult targets
11
Citations
9
References
2011
Year
Disparate SensorsEngineeringMachine LearningMulti-sensor Information FusionPoint Cloud ProcessingLocalizationDifficult TargetsImage AnalysisData SciencePattern RecognitionMultimodal Sensor FusionAutomated DetectionLaser-based SensorSensor FusionMachine VisionAutomatic Target RecognitionObject DetectionData FusionGeographyLidarComputer ScienceComputer VisionRemote Sensing
Data fusion from disparate sensors significantly improves automated man-made target detection performance compared to that of just an individual sensor. In particular, it can solve hyperspectral imagery (HSI) detection problems pertaining to low-radiance man-made objects and objects in shadows. We present an algorithm that fuses HSI and LIDAR data for automated detection of man-made objects. LIDAR is used to define a set of potential targets based on physical dimensions, and HSI is then used to discriminate between man-made and natural objects. The discrimination technique is a novel HSI detection concept that uses an HSI detection score localization metric capable of distinguishing between wide-area score distributions inherent to natural objects and highly localized score distributions indicative of man-made targets. A typical man-made localization score was found to be around 0.5 compared to natural background typical localization scores being less than 0.1.
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