Title :
A hopfield recurrent neural network trained on natural images performs state-of-the-art image compression
Author :
Hillar, Christopher ; Mehta, Ram ; Koepsell, Kilian
Author_Institution :
Redwood Center for Theor. Neurosci., Univ. of California, Berkeley, Berkeley, CA, USA
Abstract :
The Hopfield network is a well-known model of memory and collective processing in networks of abstract neurons, but it has been dismissed for use in signal processing because of its small pattern capacity, difficulty to train, and lack of practical applications. In the last few years, however, it has been demonstrated that exponential storage is possible for special classes of patterns and network connectivity structures. Over the same time period, advances in training large-scale networks have also appeared. Here, we train Hopfield networks on discretizations of grayscale digital photographs using a learning technique called minimum probability flow (MPF). After training, we demonstrate that these networks have exponential memory capacity, allowing them to perform state-of-the-art image compression in the high quality regime. Our findings suggest that the local structure of images is remarkably well-modeled by a binary recurrent neural network.
Keywords :
Hopfield neural nets; data compression; image coding; learning (artificial intelligence); probability; Hopfield recurrent neural network training; MPF; abstract neuron network; binary recurrent neural network; collective processing; exponential memory capacity; exponential storage; grayscale digital photograph discretization; image compression; large-scale network training; learning technique; memory model; minimum probability flow; natural images; network connectivity structures; Image coding; Neurons; PSNR; Standards; Training; Transform coding; Vectors; Hopfield network; Ising model; JPEG; image compression; probability flow; recurrent neural network;
Conference_Titel :
Image Processing (ICIP), 2014 IEEE International Conference on
Conference_Location :
Paris
DOI :
10.1109/ICIP.2014.7025831