融合几何和外观的道路分割

Gong Cheng, Yiming Qian, J. Elder
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引用次数: 7

摘要

我们提出了一种融合几何和外观线索的路面分割新方法。使用高斯混合建模颜色线索允许在贝叶斯框架内最佳地进行融合,避免了特别的权重。通过从训练数据中学习到的混合模型字典中选择最近邻外观模型来实现对不同场景条件的适应,并通过一种新的交叉验证方法解决了每种混合物中选择组件数量的棘手问题。定量评价表明,与单独使用几何线索的方法相比,所提出的融合方法显著提高了分割精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fusing Geometry and Appearance for Road Segmentation
We propose a novel method for fusing geometric and appearance cues for road surface segmentation. Modeling colour cues using Gaussian mixtures allows the fusion to be performed optimally within a Bayesian framework, avoiding ad hoc weights. Adaptation to different scene conditions is accomplished through nearest-neighbour appearance model selection over a dictionary of mixture models learned from training data, and the thorny problem of selecting the number of components in each mixture is solved through a novel cross-validation approach. Quantitative evaluation reveals that the proposed fusion method significantly improves segmentation accuracy relative to a method that uses geometric cues alone.
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