Centerpoints Are All You Need in Overhead Imagery
Abstract
Centerpoint-based object detector architectures achieve similar performance to those using detailed labeling like image-aligned bounding boxes, object-aligned bounding boxes, or object masks on overhead datasets.
Labeling data to use for training object detectors is expensive and time consuming. Publicly available overhead datasets for object detection are labeled with image-aligned bounding boxes, object-aligned bounding boxes, or object masks, but it is not clear whether such detailed labeling is necessary. To test the idea, we developed novel single- and two-stage network architectures that use centerpoints for labeling. In this paper we show that these architectures achieve nearly equivalent performance to approaches using more detailed labeling on three overhead object detection datasets.
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