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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B, Cybernetics >Recognizing plankton images from the shadow image particle profiling evaluation recorder
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Recognizing plankton images from the shadow image particle profiling evaluation recorder

机译:从阴影图像颗粒轮廓评估记录器中识别浮游生物图像

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摘要

We present a system to recognize underwater plankton images from the shadow image particle profiling evaluation recorder (SIPPER). The challenge of the SIPPER image set is that many images do not have clear contours. To address that, shape features that do not heavily depend on contour information were developed. A soft margin support vector machine (SVM) was used as the classifier. We developed a way to assign probability after multiclass SVM classification. Our approach achieved approximately 90% accuracy on a collection of plankton images. On another larger image set containing manually unidentifiable particles, it also provided 75.6% overall accuracy. The proposed approach was statistically significantly more accurate on the two data sets than a C4.5 decision tree and a cascade correlation neural network. The single SVM significantly outperformed ensembles of decision trees created by bagging and random forests on the smaller data set and was slightly better on the other data set. The 15-feature subset produced by our feature selection approach provided slightly better accuracy than using all 29 features. Our probability model gave us a reasonable rejection curve on the larger data set.
机译:我们提出了一种从阴影图像颗粒轮廓评估记录器(SIPPER)识别水下浮游生物图像的系统。 SIPPER图像集的挑战在于许多图像没有清晰的轮廓。为了解决这个问题,开发了不严重依赖轮廓信息的形状特征。软边界支持向量机(SVM)被用作分类器。我们开发了一种在多类SVM分类后分配概率的方法。我们的方法在浮游生物图像集合上实现了大约90%的准确性。在另一个包含手动无法识别的粒子的较大图像集上,它还提供了75.6%的整体准确性。与C4.5决策树和级联相关神经网络相比,该方法在两个数据集上的统计准确性显着提高。在较小的数据集上,单个SVM的性能明显优于通过装袋和随机森林创建的决策树的集成,而在其他数据集上则略胜一筹。通过我们的特征选择方法生成的15个特征子集比使用全部29个特征提供了更好的准确性。我们的概率模型为我们提供了较大数据集的合理拒绝曲线。

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