A novel markov random field mrf model is proposed for roof edge as well as step edge preserving image smoothing.
Roof edge image processing.
Edge detection is widely used in imageprocessing as it is a quick and easy way of extracting mostof the important features in an image.
Edge detection using derivatives often points that lie on an edge.
A ridge edge where the intensity change is not instantaneous but occur over a finite distance i e usually generated by the intersection of two surfaces.
All module communication and the camera communication happen over http.
The sensor updates to the home assistant occur over the mqtt.
Step edge transition of intensity level over 1 pixel only in ideal or few pixels on a more practical use ramp edge a slow and graduate transition roof edge a transition to a different intensity and back.
Some kind of spread line.
Piecewise smoothness constraint is imposed on these parameters rather than on the surface heights as is in traditional models for step edges.
Iot edge modules talk to the video camera to get an image then feed that into the classifier module get the results evaluate it and update the home assistant sensor accordingly.
This technique is employed after the image has been filtered for noise using median gaussian filter etc the edge operator has been applied like the ones described above canny or sobel to detect the edges and after the edges have been smoothed using an appropriate threshold value.