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Visual Recognition Software for Binary Classification and Its Application to Spruce Pollen Identification

机译:二进制分类视觉识别软件及其在云杉花粉鉴定中的应用

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摘要

Discriminating between black and white spruce (Picea mariana and Picea glauca) is a difficult palynological classification problem that, if solved, would provide valuable data for paleoclimate reconstructions. We developed an open-source visual recognition software (ARLO, Automated Recognition with Layered Optimization) capable of differentiating between these two species at an accuracy on par with human experts. The system applies pattern recognition and machine learning to the analysis of pollen images and discovers general-purpose image features, defined by simple features of lines and grids of pixels taken at different dimensions, size, spacing, and resolution. It adapts to a given problem by searching for the most effective combination of both feature representation and learning strategy. This results in a powerful and flexible framework for image classification. We worked with images acquired using an automated slide scanner. We first applied a hash-based “pollen spotting” model to segment pollen grains from the slide background. We next tested ARLO’s ability to reconstruct black to white spruce pollen ratios using artificially constructed slides of known ratios. We then developed a more scalable hash-based method of image analysis that was able to distinguish between the pollen of black and white spruce with an estimated accuracy of 83.61%, comparable to human expert performance. Our results demonstrate the capability of machine learning systems to automate challenging taxonomic classifications in pollen analysis, and our success with simple image representations suggests that our approach is generalizable to many other object recognition problems.
机译:区分黑白云杉(云杉(Picea mariana)和云杉(Picea glauca))是一个困难的孢粉学分类问题,如果解决,它将为古气候重建提供有价值的数据。我们开发了一种开源视觉识别软件(ARLO,具有分层优化功能的自动识别),能够以与人类专家同等的精度区分这两个物种。该系统将模式识别和机器学习应用于花粉图像分析,并发现通用图像特征,这些特征由以不同尺寸,大小,间距和分辨率拍摄的像素线和网格的简单特征定义。它通过搜索特征表示和学习策略的最有效组合来适应给定的问题。这样就形成了强大而灵活的图像分类框架。我们处理了使用自动幻灯片扫描仪获取的图像。我们首先应用了基于散列的“花粉斑点”模型,以从幻灯片背景中分割出花粉粒。接下来,我们测试了ARLO使用已知比例的人工构建的幻灯片重建黑白云杉花粉比例的能力。然后,我们开发了一种更具可扩展性的基于散列的图像分析方法,该方法能够区分黑白云杉的花粉,估计准确性为83.61%,可与人类专家的表现相提并论。我们的结果证明了机器学习系统能够自动执行花粉分析中具有挑战性的分类学分类的能力,并且我们通过简单的图像表示获得的成功表明我们的方法可推广到许多其他对象识别问题。

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