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Bottom-up image detection of water channel slope damages based on superpixel segmentation and support vector machine

机译:基于Superpixel分割和支持向量机的水通道斜坡损伤的自下而上的图像检测

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摘要

The operation of water supply channels is threatened by the occasionally occurred slope damages. Timely detection of their occurrence is critical for the rapid enforcement of mitigation measures. However, current practices based on routine inspection and structural heath monitoring are inefficient, laborious and tend to be biased. As an attempt to address the limitations, this paper proposes a bottom-up image detection approach for slope damages, which includes four steps, i.e. superpixel segmentation, feature handcrafting, superpixel classification based on support vector machine (SVM), and slope damage recognition. The approach employs a bottom-up strategy to infer the upper-level slope condition from the classification results of individual super-pixels in the bottom level. Experiments were conducted to demonstrate the effectiveness of the approach. The handcrafted feature "LBP + HSV was demonstrated to be effective in characterizing the image features of slope damages. An SVM model with "LBP + HSV" as input can reliably identify the slope condition in superpixels. Based on the SVM model, the bottom-up strategy achieved high recognition performance, of which the overall accuracy can be up to 91.7%. The proposed approach has potential to facilitate the early and comprehensive awareness of slope damages along the entire route of water channel by the integration with unmanned aerial vehicles.
机译:供水通道的操作受到偶尔发生的斜坡损伤的威胁。及时检测其发生对于快速执行缓解措施至关重要。但是,基于常规检查和结构性荒地监测的现行实践效率低下,艰苦,往往有偏见。作为解决限制的尝试,本文提出了一种坡度损伤的自下而上的图像检测方法,包括四个步骤,即超顶像素分割,特征手动,基于支持向量机(SVM)的超顶旋装分类,以及斜率损坏识别。该方法采用自下而上的策略来推断上层斜率条件从底部的各个超像素的分类结果推断出上层斜率状态。进行实验以证明该方法的有效性。手绘功能“LBP + HSV被证明是有效地表征斜坡损坏的图像特征。具有”LBP + HSV“的SVM模型可以可靠地识别超像素中的斜率状态。基于SVM模型,底部 - 策略实现了高度识别性能,其中整体准确性最高可达91.7%。拟议的方法有可能促进通过与无人航空车辆的整个水道渠道沿着整个水道损伤的早期和全面认识。

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