Zheng Y, Meng Y, Jin Y. Fusing bottom-up and top-down pathways in neural networks for visual object recognition. In: The 2010 International Joint Conference on Neural Networks (IJCNN). IEEE; 2010: 1-8.In this paper, an artificial neural network model is built up with two pathways: bottom-up sensory-driven pathway and top-down expectation-driven pathway, which are fused to train the neural network for visual object recognition. During the supervised learning process, the bottom-up pathway generates hypotheses as network outputs. Then target label will be applied to update the bottom-up connections. On the other hand, the hypotheses generated by the bottom-up pathway will produce expectations on the sensory input through the top-down pathwa...
Original article can be found at: http://www.sciencedirect.com/science/journal/02782626 Copyright El...
Up-propagation is an algorithm for inverting and learning neural network generative models. Sensory ...
Biological vision adopts a coarse-to-fine information processing pathway, from initial visual detect...
Zheng Y, Meng Y, Jin Y. Object recognition using a bio-inspired neuron model with bottom-up and top-...
As Rubin’s famous vase demonstrates, our visual perception tends to assign luminance contrast border...
We present a system for object recognition that is largely inspired by physiologically identified pr...
A central mystery of visual perception is the classical problem of invariant object recognition: Dif...
We propose a two-stage learning method which implements occluded visual scene analysis into a genera...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
The aim of this doctoral research is to advance understanding of how the primate brain learns to pro...
Scene understanding requires the extraction and representation of scene components, such as objects ...
The overarching objective of this work is to bridge neuroscience and artificial intelligence to ulti...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
Understanding visual perceptual learning (VPL) has become increasingly more challenging as new pheno...
We describe the 'wake-sleep' algorithm that allows a multilayer, unsupervised, neural network to bui...
Original article can be found at: http://www.sciencedirect.com/science/journal/02782626 Copyright El...
Up-propagation is an algorithm for inverting and learning neural network generative models. Sensory ...
Biological vision adopts a coarse-to-fine information processing pathway, from initial visual detect...
Zheng Y, Meng Y, Jin Y. Object recognition using a bio-inspired neuron model with bottom-up and top-...
As Rubin’s famous vase demonstrates, our visual perception tends to assign luminance contrast border...
We present a system for object recognition that is largely inspired by physiologically identified pr...
A central mystery of visual perception is the classical problem of invariant object recognition: Dif...
We propose a two-stage learning method which implements occluded visual scene analysis into a genera...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
The aim of this doctoral research is to advance understanding of how the primate brain learns to pro...
Scene understanding requires the extraction and representation of scene components, such as objects ...
The overarching objective of this work is to bridge neuroscience and artificial intelligence to ulti...
We investigate the role of neurons within the internal computations of deep neural networks for comp...
Understanding visual perceptual learning (VPL) has become increasingly more challenging as new pheno...
We describe the 'wake-sleep' algorithm that allows a multilayer, unsupervised, neural network to bui...
Original article can be found at: http://www.sciencedirect.com/science/journal/02782626 Copyright El...
Up-propagation is an algorithm for inverting and learning neural network generative models. Sensory ...
Biological vision adopts a coarse-to-fine information processing pathway, from initial visual detect...