GeoF:用于学习耦合预测器的测地线森林

P. Kontschieder, Pushmeet Kohli, J. Shotton, A. Criminisi
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引用次数: 71

摘要

传统的基于决策森林的图像标记任务(如对象分割)方法对每个变量(像素)进行独立预测[3,5,8]。这可以防止它们强制变量之间的依赖关系,并转化为局部不一致的像素标记。相反,随机场模型鼓励标签的空间一致性,但增加了计算开销。本文提出了一种新的高效的基于森林的模型,该模型通过在森林操作的特征空间中直接编码变量依赖关系来实现空间一致的语义图像分割。这种相关性是通过新的远程软连接特征捕获的,通过广义测地线距离变换计算。我们的模型可以被认为是成功的语义Texton森林、自动上下文和纠缠森林模型的推广。第二个贡献是展示了典型条件随机场(CRF)能量与森林训练目标之间的联系。这种分析为训练决策森林提供了一个新的目标,鼓励更准确的结构化预测。我们的GeoF模型在四个具有挑战性和非常多样化的图像数据集上对语义图像分割任务进行了定量验证。GeoF优于最先进的森林模型和传统的成对CRF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GeoF: Geodesic Forests for Learning Coupled Predictors
Conventional decision forest based methods for image labelling tasks like object segmentation make predictions for each variable (pixel) independently [3, 5, 8]. This prevents them from enforcing dependencies between variables and translates into locally inconsistent pixel labellings. Random field models, instead, encourage spatial consistency of labels at increased computational expense. This paper presents a new and efficient forest based model that achieves spatially consistent semantic image segmentation by encoding variable dependencies directly in the feature space the forests operate on. Such correlations are captured via new long-range, soft connectivity features, computed via generalized geodesic distance transforms. Our model can be thought of as a generalization of the successful Semantic Texton Forest, Auto-Context, and Entangled Forest models. A second contribution is to show the connection between the typical Conditional Random Field (CRF) energy and the forest training objective. This analysis yields a new objective for training decision forests that encourages more accurate structured prediction. Our GeoF model is validated quantitatively on the task of semantic image segmentation, on four challenging and very diverse image datasets. GeoF outperforms both state of-the-art forest models and the conventional pair wise CRF.
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