This is by no means a complete answer, but if there are multiple images in the tif and if you know the size in advance, you can standardize the image samples prior to classifying them. You would cut up the image into all the possible rectangles in the tif.
So when you create a classifier (I don't mention the methods here), the end result would take a synthesis of classifying all of the smaller rectangles.
So if given a tif , the 'arrow' or 'flower' images are 16px by 16px , say, you can use
Python PIL to create the samples.
from PIL import Image
image_samples = 
im = Image.open("input.tif")
sample_dimensions = (16,16)
for box in get_all_corner_combinations(im, sample_dimensions):
classifier = YourClassifier()
classifications = 
for sample in image_samples:
classifications.append (classifier (sample))
label = fuse_classifications (classifications)
Again, I didn't talk about the learning step of actually writing
YourClassifier. But hopefully this helps with laying out part of the problem.
There is a lot of research on the subject of learning to classify images as well as work in cleaning up noise in images before classifying them.
Consider browsing through this nice collection of existing Python machine learning libraries.
There are many techniques that relate to images as well.