A Bio-inspired Model for Image Representation and Image Analysis

Hui Wei, Qingsong Zuo, B. Lang
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引用次数: 1

Abstract

This paper proposes a model for image representation and image analysis using a multi-layer neural network, which is rooted in the human vision system. Having complex neural layers to represent and process information, the biological vision system is far more efficient than machine vision system. The neural model simulate non-classical receptive field of ganglion cell and its local feedback control circuit, and can represent images, beyond pixel level, self-adaptively and regularly. The results of experiments, rebuilding, distribution and contour detection, prove this method can represent image faithfully with low cost, and can produce a compact and abstract approximation to facilitate successive image segmentation and integration. This representation schema is good at extracting spatial relationships from different components of images and highlighting foreground objects from background, especially for nature images with complicated scenes. Further it can be applied to object recognition or image classification tasks in future.
一种生物启发的图像表示和图像分析模型
本文提出了一种基于人类视觉系统的多层神经网络图像表示和图像分析模型。生物视觉系统具有复杂的神经层来表示和处理信息,其效率远远高于机器视觉系统。该神经模型模拟了神经节细胞的非经典感受野及其局部反馈控制电路,能够自适应地、有规律地表示像素级以上的图像。重建、分布和轮廓检测实验结果表明,该方法能较好地再现图像,成本较低,并能产生紧凑抽象的近似,便于连续图像分割和集成。这种表示模式善于从图像的不同组成部分中提取空间关系,从背景中突出前景对象,尤其适合场景复杂的自然图像。未来还可以应用于物体识别或图像分类任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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