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Quality Assessment of Tire Shearography Images via Ensemble Hybrid Faster Region-Based ConvNets

机译:通过集合混合速度的基于区域的Coundnets对轮胎剪切图像的质量评估

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In recent times, the application of enabling technologies such as digital shearography combined with deep learning approaches in the smart quality assessment of tires, which leads to intelligent tire manufacturing practices with automated defects detection. Digital shearography is a prominent approach that can be employed for identifying the defects in tires, usually not visible to human eyes. In this research, the bubble defects in tire shearography images are detected using a unique ensemble hybrid amalgamation of the convolutional neural networks/ConvNets with high-performance Faster Region-based convolutional neural networks. It can be noticed that the routine of region-proposal generation along with object detection is accomplished using the ConvNets. Primarily, the sliding window based ConvNets are utilized in the proposed model for dividing the input shearography images into regions, in order to identify the bubble defects. Subsequently, this is followed by implementing the Faster Region-based ConvNets for identifying the bubble defects in the tire shearography images and further, it also helps to minimize the false-positive ratio (sometimes referred to as the false alarm ratio). Moreover, it is evident from the experimental results that the proposed hybrid model offers a cent percent detection of bubble defects in the tire shearography images. Also, it can be witnessed that the false-positive ratio gets minimized to 18 percent.
机译:最近,在轮胎的智能质量评估中,在智能质量评估中,将诸如数字剪切术的启用技术(如数字Shearography)相结合,这导致了具有自动缺陷检测的智能轮胎制造实践。数字Shearography是一种突出的方法,可以用于识别轮胎中的缺陷,通常对人眼不可见。在这项研究中,使用具有高性能更快的区域的卷积神经网络的卷积神经网络/扫描仪的独特合并混合胺来检测轮胎剪切图像中的气泡缺陷。可以注意到,使用CUMMNET完成区域 - 提案的日常与对象检测进行。主要是,基于滑动窗口的探测在所提出的模型中用于将输入的剪切图像分成区域,以识别气泡缺陷。随后,随后通过实施基于速度的基于区域的呼声卷,用于识别轮胎剪切图像中的气泡缺陷,并且还有助于最小化假阳性比(有时称为误报例)。此外,从实验结果明显看出,所提出的混合模型提供了百分之一百分比的轮胎剪切图像中的气泡缺陷。此外,可以目睹假阳性比率最小化为18%。

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