I have a question regarding data augmentation for training the deep neural network for object detection.
I have quite limited data set (nearly 300 images). I augmented the data by rotating each image from 0-360 degrees with stepsize of 15 degree. Consequently I got 24 rotated images out of just one. So in total, I got around 7200 images. Then I drew bounding box around the object of interest in each augmented image.
Does it seem to be a reasonable approach to enhance the data?
Best Regards
In order to train a good model you need lots of representative data. Your augmentation is representative only for rotations, so yes, it is a good method, if you are concerned about having not enough object rotations. However, it will not help in any sense with generalization to other objects/transformations.