A hybrid neural network using ICA and CGA for skin detection in RGB images

Sara Khosravi, A. Chalechale
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引用次数: 4

Abstract

Skin color recognition is a useful and popular method in human-computer interaction and also in analyzing the content. In addition, the application programs for recognizing and detecting human body parts, faces, naked people, and retrieving individuals in multimedia databases all make use of skin recognition. Thus, finding a suitable method in order to segment the pixels of an image into different groups such as skin can be very important. Imperialist competitive algorithm (ICA) is a recently introduced evolutionary algorithm that showed a promising performance in some of the optimization problems. In this article, first the combined ICA-ANN, continuous genetic algorithm (CGA) and gradient descent algorithm were proposed and their performance was tested on images in RGB color spaces. In the proposed algorithms, a multilayer perceptron neural network manages the problem's constraints, and ICA and genetic algorithms search to calculate the best response than the gradient descent algorithm. The proposed skin classification algorithms perform directly on the RGB color space. The results clearly indicate that the proposed algorithm significantly improves the performance of an MLP neural network.
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基于ICA和CGA的RGB图像皮肤检测混合神经网络
在人机交互和内容分析中,肤色识别是一种有用且流行的方法。此外,识别和检测人体部位、面部、裸体、检索多媒体数据库中的个人等应用程序都利用了皮肤识别技术。因此,找到一种合适的方法来将图像的像素分割成不同的组(如皮肤)是非常重要的。帝国竞争算法(imperial competitive algorithm, ICA)是近年来引入的一种进化算法,在一些优化问题上表现出了良好的性能。本文首先提出了ICA-ANN、连续遗传算法(CGA)和梯度下降算法的组合,并在RGB色彩空间的图像上测试了它们的性能。在该算法中,多层感知器神经网络对问题的约束进行管理,ICA和遗传算法进行搜索,计算出比梯度下降算法更优的响应。所提出的皮肤分类算法直接在RGB颜色空间上执行。结果表明,该算法显著提高了MLP神经网络的性能。
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