PDM-ENLOR: Learning Ensemble of Local PDM-Based Regressions

Yen H. Le, U. Kurkure, I. Kakadiaris
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引用次数: 4

Abstract

Statistical shape models, such as Active Shape Models (ASMs), suffer from their inability to represent a large range of variations of a complex shape and to account for the large errors in detection of model points. We propose a novel method (dubbed PDM-ENLOR) that overcomes these limitations by locating each shape model point individually using an ensemble of local regression models and appearance cues from selected model points. Our method first detects a set of reference points which were selected based on their saliency during training. For each model point, an ensemble of regressors is built. From the locations of the detected reference points, each regressor infers a candidate location for that model point using local geometric constraints, encoded by a point distribution model (PDM). The final location of that point is determined as a weighted linear combination, whose coefficients are learnt from the training data, of candidates proposed from its ensemble's component regressors. We use different subsets of reference points as explanatory variables for the component regressors to provide varying degrees of locality for the models in each ensemble. This helps our ensemble model to capture a larger range of shape variations as compared to a single PDM. We demonstrate the advantages of our method on the challenging problem of segmenting gene expression images of mouse brain.
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PDM-ENLOR:基于局部pdm回归的学习集成
统计形状模型,如主动形状模型(asm),无法表示复杂形状的大范围变化,也无法解释模型点检测中的大误差。我们提出了一种新的方法(称为PDM-ENLOR),该方法通过使用局部回归模型的集合和来自选定模型点的外观线索来单独定位每个形状模型点,从而克服了这些限制。我们的方法首先检测一组参考点,这些参考点是在训练过程中根据其显著性选择的。对于每个模型点,建立一个回归量集合。从检测到的参考点的位置,每个回归器使用由点分布模型(PDM)编码的局部几何约束推断出该模型点的候选位置。该点的最终位置被确定为加权线性组合,其系数从其集合的分量回归量提出的候选数据的训练数据中学习。我们使用不同的参考点子集作为分量回归量的解释变量,为每个集合中的模型提供不同程度的局部性。与单个PDM相比,这有助于我们的集成模型捕获更大范围的形状变化。我们证明了该方法在小鼠大脑基因表达图像分割这一具有挑战性的问题上的优势。
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