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Machine learning and multiscale methods in the identification of bivalve larvae

机译:机器学习和多尺度方法在鉴定双幼虫

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We describe a novel application of support vector machines and multiscale texture and color invariants to a problem in biological oceanography: the identification of 6 species of bivalve larvae. Our data consists of polarized color images of scallop and other bivalve larvae (between 2 and 17 days old) collected from the ocean by a shipboard optical imaging system of our design. Larvae of scallops, clams, and oysters are small (100 microns) with few distinguishing features when observed under standard light microscopy. However, the use of polarized light with a full wave retardation plate produces a vivid color, birefringence pattern. The patterns display very subtle differences between species, often not discernable to human observers. We show that a soft-margin support vector machine with Gaussian RBF kernel is a good discriminator on a feature set extracted from Gabor wavelet transforms and color distribution angles of each image. By constraining the Gabor center frequencies to be low, the resulting system can attain classification accuracy in excess of 90% for vertically oriented images, and in excess of 80% for randomly oriented images.
机译:我们描述了一种新颖的支持向量机和多尺度纹理和颜色不变性对生物海洋学中的问题:鉴定6种双幼虫幼虫。我们的数据由扇贝和其他双幼虫(2至17天)由我们设计的船上光学成像系统收集的扇贝和其他双向幼虫(2到17天)组成。扇贝,蛤蜊和牡蛎的幼虫很小(100微米),在标准光学显微镜下观察时,具有少数区别特征。然而,使用具有全波延迟板的偏振光产生鲜艳的颜色,双折射模式。该图案在物种之间显示出非常微妙的差异,通常不能可辨别到人类观察者。我们表明,具有高斯RBF内核的软保证金支持向量机是从来自Gabor小波变换和每个图像的颜色分布角提取的特征集上的良好判别器。通过约束Gabor中心频率为低电平,所得到的系统可以实现垂直定向图像超过90%的分类精度,而随机定向图像超过80%。

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