Object Detection Based on Global-Local Saliency Constraint in Aerial Images
Object Detection Based on Global-Local Saliency Constraint in Aerial Images
Blog Article
Different from object detection in natural image, optical remote sensing object detection is a challenging task, due to the diverse meteorological conditions, complex background, varied orientations, scale variations, etc.In this paper, to address this issue, we propose a novel Messengers in the Creative Work of Journalists object detection network (the global-local saliency constraint network, GLS-Net) that can make full use of the global semantic information and achieve more accurate oriented bounding boxes.More precisely, to improve the quality of the region proposals and bounding boxes, we first propose a saliency pyramid which combines a saliency algorithm with a feature pyramid network, to reduce the impact of complex background.Based on the saliency pyramid, we then propose a global attention module branch to enhance the semantic connection between the target and the global scenario.A fast feature fusion strategy is also used to The beauty of simple models: Themes in recognition heuristic research combine the local object information based on the saliency pyramid with the global semantic information optimized by the attention mechanism.
Finally, we use an angle-sensitive intersection over union (IoU) method to obtain a more accurate five-parameter representation of the oriented bounding boxes.Experiments with a publicly available object detection dataset for aerial images demonstrate that the proposed GLS-Net achieves a state-of-the-art detection performance.