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Confidence Sets for Fine-Grained Categorization and Plant Species Identification

机译:细粒度分类和植物物种识别的置信集

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We present a new hierarchical strategy for fine-grained categorization. Standard, fully automated systems report a single estimate of the category, or perhaps a ranked list, but have non-neglible error rates for most realistic scenarios, which limits their utility. Instead, we propose a semi-automated system which outputs a it confidence set (CS)-a variable-length list of categories which contains the true one with high probability (e.g., a 99 % CS). Performance is then measured by the expected size of the CS, reflecting the effort required for final identification by the user. The implementation is based on a hierarchical clustering of the full set of categories. This tree of subsets provides a graded family of candidate CS's containing visually similar categories. There is also a learned discriminant score for deciding between each subset and all others combined. Selection of the CS is based on the joint score likelihood under a Bayesian network model. We apply this method to determining the species of a plant from an image of a leaf against either a uniform or natural background. Extensive experiments are reported. We obtain superior results relative to existing methods for point estimates for scanned leaves and report the first useful results for natural images at the expense of asking the user to initialize the process by identifying specific landmarks.
机译:我们提出了一种用于细分类的新分层策略。标准的全自动系统报告该类别的单个估计值,或者报告一个排名列表,但是在大多数实际情况下错误率均不容忽视,这限制了它们的实用性。取而代之的是,我们提出了一种半自动化系统,该系统输出一个it置信集(CS)-可变长度的类别列表,其中包含具有很高概率的真实列表(例如,99%的CS)。然后,通过CS的预期大小来衡量性能,以反映用户最终识别所需的工作量。该实现基于整个类别集合的分层聚类。该子集树提供了包含视觉相似类别的候选CS的分级家庭。在每个子集和所有其他子集之间进行决策时,还有一个学习的判别分数。 CS的选择基于贝叶斯网络模型下的联合得分可能性。我们将这种方法应用于根据均匀或自然背景下的叶子图像确定植物的种类。报告了广泛的实验。与现有的扫描叶子点估计方法相比,我们获得了优异的结果,并报告了自然图像的第一个有用结果,但以要求用户通过识别特定地标来初始化过程为代价。

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