@article{MAKHILLJEAS2020152119476, title = {Detecting Vehicles using YOLO from Aerial Images}, journal = {Journal of Engineering and Applied Sciences}, volume = {15}, number = {21}, pages = {3586-3592}, year = {2020}, issn = {1816-949x}, doi = {jeasci.2020.3586.3592}, url = {https://makhillpublications.co/view-article.php?issn=1816-949x&doi=jeasci.2020.3586.3592}, author = {Shighaf,Omar and}, keywords = {Deep learning,convolutional neural networks,YOLO,COWC,VEDAI,OIRDS}, abstract = {Detection of vehicles from aerial images is a challenging subject due to the large image resolution with small targets and variant orientations. Unfortunately, there isn’t any dataset large enough to be suitable for training deep models. Therefore, we recognize COWC, large aerial image dataset to use in vehicle detection. In this project, the third version of popular YOLO is modified to vastly improve its performance on aerial data. We trained on a large amount of aerial images from COWC dataset. The proposed detector was able to achieve mAP = 95% on VEDAI dataset. It outperformed SSD and R-CNN. For the OIRDS dataset, we achieved mAP = 67% without any previous training.} }