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Efficient Learning of Spatial Patterns with Multi-Scale Conditional Random Fields for Region-Based Classification

机译:基于区域尺度分类的多尺度条件随机域空间模式的高效学习

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摘要

Automatic image classification is of major importance for a wide range of applications and is supported by a complex process that usually requires the identification of individual regions and spatial patterns (contextual information) among neighboring regions within images. Hierarchical conditional random fields (CRF) consider both multi-scale and contextual information in a unified discriminative probabilistic framework, yet they suffer from two main drawbacks. On the one hand, their current classification performance still leaves space for improvement, mostly due to the use of very simple or inappropriate pairwise energy expressions to model complex spatial patterns; on the other hand, their training remains complex, particularly for multi-class problems. In this work, we investigated alternative pairwise energy expressions to better account for class transitions and developed an efficient parameters learning strategy for the resultant expression. We propose: (i) a multi-scale CRF model with novel energies that involves information related to the multi-scale image structure; and (ii) an efficient maximum margin parameters learning procedure where the complex learning problem is decomposed into simpler individual multi-class sub-problems. During experiments conducted on several well-known satellite image data sets, the suggested multi-scale CRF exhibited between a 1% and 15% accuracy improvement compared to other works. We also found that, on different multi-scale decompositions, the total number of regions and their average size have a direct impact on the classification results.
机译:自动图像分类对于广泛的应用非常重要,并且需要一个复杂的过程来支持,该过程通常需要识别单个区域和图像中相邻区域之间的空间模式(上下文信息)。分层条件随机字段(CRF)在统一的判别概率框架中同时考虑了多尺度信息和上下文信息,但是它们具有两个主要缺点。一方面,它们当前的分类性能仍然有待改进的空间,这主要是由于使用了非常简单或不合适的成对能量表达式来对复杂的空间模式进行建模。另一方面,他们的培训仍然很复杂,尤其是对于多类问题。在这项工作中,我们研究了替代的成对能量表达式,以更好地说明类转换,并为结果表达式开发了有效的参数学习策略。我们提出:(i)具有新能量的多尺度CRF模型,其中涉及与多尺度图像结构有关的信息; (ii)有效的最大余量参数学习程序,其中将复杂的学习问题分解为更简单的单个多类子问题。在对几个著名的卫星图像数据集进行的实验中,与其他工作相比,建议的多尺度CRF精度提高了1%至15%。我们还发现,在不同的多尺度分解中,区域总数及其平均大小直接影响分类结果。

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