I'm looking to compare two lists of distances (floats) in python. The distances represent how far away my robot is from a wall at different angles. One array is my "best guess" distance array and the other is the array of actual distances. I need to return a number between [0, 1] that represents the similarity between these two lists of floats. The distances match up 1 to 1. That is, the distance at index 0 should be compared to the distance at index 0 in the other array. Right now, for each index, I am dividing the smaller number by the larger number to get a percentage difference. Then I am taking the average of these percentage differences (total percentage difference / number of entries in the array) to get a number between 0 and 1. However, my approach does not seem to be accurate enough. Is there a better algorithm for comparing two ordered lists of floats?
1 Answer
It looks like you need a normalized Euclidean distance between two vectors.
It is simple to caclulate and you can read more about it here.