Wc. Chen et al., ADAPTIVE STEP-EDGE MODEL FOR SELF-CONSISTENT TRAINING OF NEURAL-NETWORK FOR PROBABILISTIC EDGE LABELING, IEE proceedings. Vision, image and signal processing, 143(1), 1996, pp. 41-50
The authors present a robust neural network edge labelling strategy in
which network is trained with data from an imaging model of an ideal
step edge. They employ the Sobel operator and other preprocessing step
s on image data to exploit the known invariances due to lighting and r
otation and so reduce the complexity of the mapping which the network
has to learn. The composition of the training set to achieve labelling
of the image lattice with Bayesian posterior probabilities is describ
ed. The back propagation algorithm is used in network training with a
novel scheme for constructing the desired training set; results are sh
own for real images and comparisons are made with the Canny edge detec
tor. The effects of adding zero-mean Gaussian image noise are also sho
wn. Several training sets of different sizes generated from the step e
dge model have been used to probe the network generalisation ability a
nd results for both training and testing sets are shown. To elucidate
the roles of the Sobel operator and the network, a probabilistic Sobel
labelling strategy has been derived; its results are inferior to thos
e of the neural network.