Object Detection in Aerial Images: What Improves the Accuracy?

Malik, Hashmat Shadab, Sobirov, Ikboljon, Mohamed, Abdelrahman

arXiv.org Artificial Intelligence 

Object detection is a challenging and popular computer vision problem. The problem is even more challenging in aerial images due to significant variation in scale and viewpoint in a diverse set of object categories. Recently, deep learning-based object detection approaches have been actively explored for the problem of object detection in aerial images. In this work, we investigate the impact of Faster R-CNN for aerial object detection and explore numerous strategies to improve its performance for aerial images. We conduct extensive experiments on the challenging iSAID dataset. The resulting adapted Faster R-CNN obtains a significant Figure 1: The figure shows the results of the improvements mAP gain of 4.96% over its vanilla baseline counterpart introduced on top of the vanilla Faster R-CNN.