IEEE Trans Image Process. 2018 May;27(5):2160-2175. doi: 10.1109/TIP.2017.2783627.
Thermographic inspection has been widely applied to non-destructive testing and evaluation with the capabilities of rapid, contactless, and large surface area detection. Image segmentation is considered essential for identifying and sizing defects. To attain a high-level performance, specific physics-based models that describe defects generation and enable the precise extraction of target region are of crucial importance. In this paper, an effective genetic first-order statistical image segmentation algorithm is proposed for quantitative crack detection. The proposed method automatically extracts valuable spatial-temporal patterns from unsupervised feature extraction algorithm and avoids a range of issues associated with human intervention in laborious manual selection of specific thermal video frames for processing. An internal genetic functionality is built into the proposed algorithm to automatically control the segmentation threshold to render enhanced accuracy in sizing the cracks. Eddy current pulsed thermography will be implemented as a platform to demonstrate surface crack detection. Experimental tests and comparisons have been conducted to verify the efficacy of the proposed method. In addition, a global quantitative assessment index F-score has been adopted to objectively evaluate the performance of different segmentation algorithms.
热成像检测已经广泛应用于无损检测和评估,具有快速、非接触和大面积检测的能力。图像分割被认为是识别和确定缺陷大小的关键。为了实现高性能,描述缺陷产生并能够精确提取目标区域的特定物理基础模型至关重要。本文提出了一种用于定量裂纹检测的有效的基于遗传的一阶统计图像分割算法。所提出的方法自动从无监督特征提取算法中提取有价值的时空模式,避免了由于人为干预而导致的一系列问题,例如在处理特定的热视频帧时需要进行繁琐的手动选择。所提出的算法中内置了内部遗传功能,可自动控制分割阈值,从而提高裂纹尺寸测量的准确性。将电涡流脉冲热成像作为平台来演示表面裂纹检测。已经进行了实验测试和比较,以验证所提出方法的有效性。此外,还采用了全局定量评估指标 F 分数来客观评估不同分割算法的性能。