the hough transform for vertical object recognition in 3d images generated from airborne lidar data...
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The Hough Transform for Vertical Object Recognition in 3D Images
Generated from Airborne Lidar Data
Christopher Parrish
ECE533 Project
December 2006
GPS Reference Station
Airborne Lidar
Airport Obstruction
Surveying
Lidar Point Cloud
Voxelize
3D Grayscale Intensity Image
3D Sobeloperator
3D Grayscale Edge Image
Threshold segmentation
3D Binary Edge Image
Hough Transform to identify vertical cylinders
Vertical objects of interest
Hough transform- based approach for detecting vertical objects of cylindrical shape:
3D Grayscale Image2D Color Image Laser Point Cloud
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Gradient of a 3D image, f(x,y,z):
Magnitude of the gradient:
3D Sobel operator (three 3x3x3 filters expressed here as sets of three 2D matrices)
Thresholded (binary) edge image
Computing Binary Edge Image:
3D Binary Edge Images
HT Cylinder Detection Algorithm:
Input = 3D binary edge imageQuantize 3D parameter space. Initialize all accumulator cells to zero. For each nonzero voxel in 3D binary edge
image, step through all values of s and t. At each location:
Solve for r Round r to its nearest accumulator cell value Increment counter for that (s,t,r) accumulator cell.
Find entry in 3D accumulator array with highest # of votes.
Assume cylinders are vertical (axes parallel to mapping frame Z axis) => # of parameters reduced from 5 to 3. Representation: (X-s)2+(Y-t)2 = r2
Cylinders Detected Using Hough Transform:
Comparison of radii & axes locations of HT-detected cylinders with
field-surveyed data: