My aim is to detect whether a car slot is empty or occupied by a car. Finally, the number of cars will be counted in a car park.
The camera is monitoring the car park as it is seen in the sample pictures. Each car park slot is presented with very less pixels. I select four pixel points to define ROI, and I apply the perspective transformation in the image, please see Image 1.
SVM would be a nice approach to classify the samples and train. Unfortunately, I am not sure about the feature vector.
-Shadow of the cars in the adjacent slots
-A car is one slot is visible partially in another slot.
-Shadow of the big buildings -Weather changes (sunny, cloudy etc. ) -After the rain, slot color is changed (dry or wet) -Different slots and perspective changes
What kind of features or feature vectors would be the best for the classification?
Thank you in advance,