Abstract

Image signal processing has considerable value in artificial intelligence. However, due to the diverse disturbance (e.g., color, noise), the image signal processing, especially the representation of the signal, remains a big challenge. In the human visual system, it has been justified that simple cells in the primary visual cortex are obviously sensitive to vision signals with partial orientation features. In other words, the image signals are extracted and described along the pathway of visual processing. Inspired by this neural mechanism of the primary visual cortex, it is possible to build an image signal-processing model as the neural architecture. In this paper, we presented a method to process the image signal involving a multitude of disturbance. For image signals, we first extracted 4 rivalry pathways via the projection of color. Secondly, we designed an algorithm in which the computing process of the stimulus with partial orientation features can be altered into a process of analytical geometry, resulting in that the signals with orientation features can be extracted and characterized. Finally, through the integration of characterizations from the 4 different rivalry pathways, the image signals can be effectively interpreted and reconstructed. Instead of data-driven methods, the presented approach requires no prior training. With the use of geometric inferences, the method tends to be interpreted and applied in the signal processor. The extraction and integration of rivalry pathways of different colors allow the method to be effective and robust to the signals with the image noise and disturbance of colors. Experimental results showed that the approach can extract and describing the image signal with diverse disturbance. Based on the characterization of the image signal, it is possible to reconstruct signal features which can effectively represent the important information from the original image signal.

Highlights

  • With the development of the artificial intelligence, automotive robots with advanced vision-perception-based systems raise several timing issues

  • It is indicated that the visual signal has been processed and characterized along the pathway from the retina to the primary visual cortex, and the simple cells have been sensitive to the signal with stimuli of partial orientation

  • A method designed to effectively process the color disturbance through the color projection; an algorithm developed to alter the computing processing of the stimuli of partial orientation into the issue of analytical geometry, which is more interpretable and robust; an approach presented to integrate the representation from four different rivalry pathways, allowing the representation to be described and reconstructed as the original image signal

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Summary

A Signal-Processing Neural Model Based on Biological Retina

Hui Wei 1, * , Luping Wang 1,2 , Shanshan Wang 3 , Yuxiang Jiang 1 and Jingmeng Li 1.

Introduction
Related Work
Inference
Line Detection
Representation and Reconstruction
Conclusions
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