Publication | Closed Access
Detecting Rotated Objects as Gaussian Distributions and Its 3-D Generalization
102
Citations
65
References
2022
Year
EngineeringMachine LearningFeature DetectionRotation Detection3D Computer VisionImage AnalysisBbox ParametersData SciencePattern RecognitionRotated ObjectsComputational GeometryGeometric ModelingMachine VisionObject DetectionComputer ScienceStructure From MotionDeep LearningMedical Image Computing3D Object RecognitionComputer Vision3D VisionNatural SciencesHeading EstimationMulti-view Geometry
Existing detection methods commonly use a parameterized bounding box (BBox) to model and detect (horizontal) objects and an additional rotation angle parameter is used for rotated objects. We argue that such a mechanism has fundamental limitations in building an effective regression loss for rotation detection, especially for high-precision detection with high IoU (e.g., 0.75). Instead, we propose to model the rotated objects as Gaussian distributions. A direct advantage is that our new regression loss regarding the distance between two Gaussians e.g., Kullback-Leibler Divergence (KLD), can well align the actual detection performance metric, which is not well addressed in existing methods. Moreover, the two bottlenecks i.e., boundary discontinuity and square-like problem also disappear. We also propose an efficient Gaussian metric-based label assignment strategy to further boost the performance. Interestingly, by analyzing the BBox parameters' gradients under our Gaussian-based KLD loss, we show that these parameters are dynamically updated with interpretable physical meaning, which help explain the effectiveness of our approach, especially for high-precision detection. We extend our approach from 2-D to 3-D with a tailored algorithm design to handle the heading estimation, and experimental results on twelve public datasets (2-D/3-D, aerial/text/face images) with various base detectors show its superiority.
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