Abstract

The human visual system is one of the most important components of the nervous system, responsible for visual perception. The research on orientation detection, in which neurons of the visual cortex respond only to a line stimulus in a particular orientation, is an important driving force of computer vision and biological vision. However, the principle underlying orientation detection remains a mystery. In order to solve this mystery, we first propose a completely new mechanism that explains planar orientation detection in a quantitative manner. First, we assume that there are planar orientation-detective neurons which respond only to a particular planar orientation locally and that these neurons detect local planar orientation information based on nonlinear interactions that take place on the dendrites. Then, we propose an implementation of these local planar orientation-detective neurons based on their dendritic computations, use them to extract the local planar orientation information, and infer the global planar orientation information from the local planar orientation information. Furthermore, based on this mechanism, we propose an artificial visual system (AVS) for planar orientation detection and other visual information processing. In order to prove the effectiveness of our mechanism and the AVS, we conducted a series of experiments on rectangular images which included rectangles of various sizes, shapes and positions. Computer simulations show that the mechanism can perfectly perform planar orientation detection regardless of their sizes, shapes and positions in all experiments. Furthermore, we compared the performance of both AVS and a traditional convolution neural network (CNN) on planar orientation detection and found that AVS completely outperformed CNN in planar orientation detection in terms of identification accuracy, noise resistance, computation and learning cost, hardware implementation and reasonability.

Highlights

  • The human visual system is one of the most important components of the nervous system, responsible for visual perception

  • We scanned every pixel of the two-dimensional images with a 3 × 3 window, used four planar orientation-detective neurons to extract the local planar orientation information at every pixel of the two-dimensional images, and made a judgement of the global planar orientation information based on the local planar orientation information

  • This paper describes a mechanism for detecting global planar orientation by introducing local planar orientation-detective neurons to compute local planar orientation, and a scheme to judge global planar orientation based on local planar orientation information

Read more

Summary

Introduction

The human visual system is one of the most important components of the nervous system, responsible for visual perception. In 1981, David Hubel and Torsten Wiesel won the Nobel Prize in Medicine because of their landmark discovery of orientation preference and related works [1,2] Based on this remarkable discovery, Hubel and Wiesel found the orientation-selective cells in the primary visual cortex (V1) and proposed a simple yet powerful model of how such orientation selectivity could emerge from nonselective thalamocortical inputs [1]. How selectivity for planar orientation could be produced by a model with circuitry that is based on the anatomy of the V1 cortex and how the selectivity for planar orientation contributes to the detection of the global planar orientation of a rectangular object with different sizes, shapes or positions. We implement a model of the local planar orientation-detective neuron based on the dendritic neuron model that the authors proposed previously [9,10,11]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call