I'm training a tensorflow object detection model which has been pre-trained using COCO to recognize a single type/class of objects. Some images in my dataset have multiple instances of such objects in them.
Given that every record used in training has a single bounding box, I wonder what is the best approach to deal with the fact that my images may have more than one object of the same class in them.
- Should I use the same image for multiple records?
- Could that be problematic when training?
- Would it be better if I could split said images so that they only contained one object?