Continuum Detection and Predictive-Corrective Classification of Crack Networks

J. J. Steckenrider, T. Furukawa
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引用次数: 1

Abstract

This paper proposes a crack network detection and classification scheme for perception of highly stochastic road cracks using probabilistic formulations. Contrary to conventional binary detection techniques, the continuum detection approach described here allows features to be extracted from crack images with allowance for uncertainty in detection. Furthermore, multi-dimensional prediction and belief fusion in the feature space is afforded by the sequential nature of data collection; classification is then carried out by probabilistic decision-making. These methods have shown superior performance to simplistic conventional approaches, offering as much as a 14% increase in accuracy when compared to naïve classification, even without any parameter optimization. Furthermore, predictive-corrective classification yields a 28% increase in variance of class probability assignment; this means that, in addition to improved classification results, correct classes are assigned with greater confidence when compared to simpler methods.
裂缝网络的连续统检测与预测校正分类
本文提出了一种基于概率公式的高度随机道路裂缝网络检测与分类方案。与传统的二值检测技术相反,这里描述的连续体检测方法允许从裂纹图像中提取特征,同时允许检测中的不确定性。此外,数据收集的顺序性提供了特征空间的多维预测和信念融合;然后通过概率决策进行分类。这些方法比简单的传统方法表现出优越的性能,即使没有任何参数优化,与naïve分类相比,这些方法的准确率也提高了14%。此外,预测校正分类产生28%的类概率分配方差增加;这意味着,除了改进的分类结果之外,与更简单的方法相比,分配正确的类具有更大的置信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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