Human Perception Based Color Image Segmentation

Neeta Gargote, S. Devaraj, S. Shahapure
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引用次数: 2

Abstract

Color image segmentation is probably the most important task in image analysis and understanding. A novel Human Perception Based Color Image Segmentation System is presented in this paper. This system uses a neural network architecture. The neurons here uses a multisigmoid activation function. The multisigmoid activation function is the key for segmentation. The number of steps ie. thresholds in the multisigmoid function are dependent on the number of clusters in the image. The threshold values for detecting the clusters and their labels are found automatically from the first order derivative of histograms of saturation and intensity in the HSI color space. Here the main use of neural network is to detect the number of objects automatically from an image. It labels the objects with their mean colors. The algorithm is found to be reliable and works satisfactorily on different kinds of color images.
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基于人类感知的彩色图像分割
彩色图像分割可能是图像分析和理解中最重要的任务。提出了一种新的基于人类感知的彩色图像分割系统。该系统采用神经网络架构。这里的神经元使用多s型激活功能。多s型激活函数是分割的关键。步骤数。多重s型函数的阈值取决于图像中聚类的数量。从HSI色彩空间中饱和度和强度直方图的一阶导数中自动找到检测聚类及其标签的阈值。这里神经网络的主要用途是从图像中自动检测物体的数量。它用物体的平均颜色来标记它们。实验结果表明,该算法是可靠的,在不同类型的彩色图像上都能取得满意的效果。
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