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首页> 外文期刊>Journal of food engineering >Fast feature selection algorithm for poultry skin tumor detection in hyperspectral data
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Fast feature selection algorithm for poultry skin tumor detection in hyperspectral data

机译:高光谱数据中禽肉皮肤肿瘤的快速特征选择算法

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摘要

Hyperspectral reflectance imaging data are analyzed for poultry skin tumor detection. We consider selecting only a few wavebands from hyperspectral data for potential use in a real-time multispectral camera. To do this, we improve our prior tumor detection system by employing our new adaptive branch and bound algorithm and a support vector machine classifier. Our HS analysis is useful since it provides a guideline for selection of the specific wavelengths for best tumor detection (feature selection). Experimental results demonstrate that our optimal adaptive branch and bound algorithm is significantly faster than other versions of the branch and bound algorithm. We compare the performance of our feature selection algorithm to that of a feature extraction algorithm and show that using our feature selection algorithm gives a better tumor detection rate and a lower false alarm rate.
机译:分析高光谱反射成像数据以检测家禽皮肤肿瘤。我们考虑从高光谱数据中只选择几个波段,以供实时多光谱相机使用。为此,我们采用新的自适应分支定界算法和支持向量机分类器,改进了现有的肿瘤检测系统。我们的HS分析非常有用,因为它为选择特定波长以提供最佳肿瘤检测(功能选择)提供了指南。实验结果表明,我们的最优自适应分支定界算法明显快于其他版本的分支定界算法。我们将特征选择算法与特征提取算法的性能进行了比较,结果表明,使用我们的特征选择算法可提供更好的肿瘤检测率和更低的误报率。

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