Vision at A Glance: Interplay between Fine and Coarse Information Processing Pathways
Zilong Ji, Xiaolong Zou, Tiejun Huang, Si Wu

TL;DR
This paper presents a computational model mimicking neural pathways involved in visual recognition, demonstrating how interactions between fine and coarse information processing improve robustness and performance.
Contribution
The study introduces a dual-pathway neural network model with interaction mechanisms, revealing computational benefits of pathway interplay in object recognition.
Findings
FineNet enhances CoarseNet's performance via imitation.
CoarseNet improves FineNet's noise robustness.
CoarseNet output biases FineNet to boost accuracy.
Abstract
Object recognition is often viewed as a feedforward, bottom-up process in machine learning, but in real neural systems, object recognition is a complicated process which involves the interplay between two signal pathways. One is the parvocellular pathway (P-pathway), which is slow and extracts fine features of objects; the other is the magnocellular pathway (M-pathway), which is fast and extracts coarse features of objects. It has been suggested that the interplay between the two pathways endows the neural system with the capacity of processing visual information rapidly, adaptively, and robustly. However, the underlying computational mechanisms remain largely unknown. In this study, we build a computational model to elucidate the computational advantages associated with the interactions between two pathways. Our model consists of two convolution neural networks: one mimics the…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Face Recognition and Perception
MethodsConvolution · Restricted Boltzmann Machine
