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Noise robust hammering echo analysis for concrete structure assessment under mismatch conditions: A sparse coding approach

机译:失稳条件下用于混凝土结构评估的噪声鲁棒锤击回波分析:一种稀疏编码方法

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Hammering inspection is one of the most widely used methods for concrete structure condition assessment. This paper proposes effective hammering sound analysis scheme, which delivers favourable defect detection performance under various noise situations. This work is inspired by the facts that hammering echo waveforms are noisy and redundant, while the underlying defect-induced patterns are anticipated to be sparse with respect to certain frequency bands. Grounded on such hypothesis, we introduce sparse coding approaches for hammering sound analysis so as to characterize representative patterns from corrupted echo signal. Particularly, there are two major steps in sparse coding: dictionary learning and codes generation. We investigated the two parts separately, allowing us to exploit contribution of each. Proposed approach is demonstrated with real-world data; furthermore, In order to validate noise robustness, echo condition assessment is performed under mismatch acoustic environments with varying noise intensities. Experimental results verified the effectiveness of our approach and even under extremely noisy scenario, i.e. -10dB, the system achieved 96% echo analysis accuracy. In addition, this paper also acts as a practical guide to select efficient sparse coding algorithms for real applications, not limited to hammering sound analysis.
机译:锤击检查是混凝土结构状态评估中使用最广泛的方法之一。本文提出了一种有效的锤击声分析方案,可以在各种噪声情况下提供良好的缺陷检测性能。这项工作是受以下事实启发的:锤击回波波形具有噪声和冗余性,而潜在的缺陷引起的模式则相对于某些频带而言是稀疏的。基于这样的假设,我们引入了稀疏编码方法来锤击声音分析,以便从损坏的回声信号中表征典型模式。特别地,稀疏编码有两个主要步骤:字典学习和代码生成。我们分别研究了这两个部分,使我们能够利用每个部分的贡献。实际数据演示了所建议的方法。此外,为了验证噪声的鲁棒性,在具有不同噪声强度的不匹配声学环境下执行回声条件评估。实验结果证明了我们方法的有效性,即使在非常嘈杂的情况下(即-10dB),该系统也能达到96%的回声分析精度。此外,本文还为实际应用中选择有效的稀疏编码算法提供了实用指南,而不仅限于锤击声音分析。

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