We present a new approach for the discriminative training
of continuous-valued Markov Random Field (MRF)
model parameters. In our approach we train the MRF
model by optimizing the parameters so that the minimum
energy solution of the model is as similar as possible to the
ground-truth. This leads to parameters which are directly
optimized to increase the quality of the MAP estimates during
inference. Our proposed technique allows us to develop
a framework that is flexible and intuitively easy to understand
and implement, which makes it an attractive alternative
to learn the parameters of a continuous-valued MRF
model. We demonstrate the effectiveness of our technique by
applying it to the problems of image denoising and inpainting
using the Field of Experts model. In our experiments,
the performance of our system compares favourably to the
Field of Experts model trained using contrastive divergence
when applied to the denoising and inpainting tasks.
Kegan G. G. Samuel, Marshall F. Tappen