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A novel neural network based image reconstruction model with scale and rotation invariance for target identification and classification for Active millimetre wave imaging

机译:基于新型神经网络的尺度和旋转不变性的图像重建模型,用于主动毫米波成像的目标识别和分类

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Millimetre wave imaging (MMW) is gaining tremendous interest among researchers, which has potential applications for security check, standoff personal screening, automotive collision-avoidance, and lot more. Current state-of-art imaging techniques viz. microwave and X-ray imaging suffers from lower resolution and harmful ionizing radiation, respectively. In contrast, MMW imaging operates at lower power and is non-ionizing, hence, medically safe. Despite these favourable attributes, MMW imaging encounters various challenges as; still it is very less explored area and lacks suitable imaging methodology for extracting complete target information. Keeping in view of these challenges, a MMW active imaging radar system at 60 GHz was designed for standoff imaging application. A C-scan (horizontal and vertical scanning) methodology was developed that provides cross-range resolution of 8.59 mm. The paper further details a suitable target identification and classification methodology. For identification of regular shape targets: mean-standard deviation based segmentation technique was formulated and further validated using a different target shape. For classification: probability density function based target material discrimination methodology was proposed and further validated on different dataset. Lastly, a novel artificial neural network based scale and rotation invariant, image reconstruction methodology has been proposed to counter the distortions in the image caused due to noise, rotation or scale variations. The designed neural network once trained with sample images, automatically takes care of these deformations and successfully reconstructs the corrected image for the test targets. Techniques developed in this paper are tested and validated using four different regular shapes viz. rectangle, square, triangle and circle.
机译:毫米波成像(MMW)在研究人员中引起了巨大兴趣,它在安全检查,防区外人员筛查,避免汽车碰撞等方面具有潜在的应用。当前最先进的成像技术。微波和X射线成像分别具有较低的分辨率和有害的电离辐射。相比之下,MMW成像在较低功率下运行且不电离,因此具有医疗安全性。尽管具有这些有利属性,MMW成像仍面临各种挑战。仍然是勘探面积较小的地区,缺乏用于提取完整目标信息的合适成像方法。考虑到这些挑战,设计了60 GHz的MMW有源成像雷达系统用于远距成像应用。开发了一种C扫描(水平和垂直扫描)方法,可提供8.59毫米的跨范围分辨率。本文进一步详细介绍了合适的目标识别和分类方法。为了识别常规形状的目标,制定了基于均值标准差的分割技术,并使用其他目标形状进一步进行了验证。对于分类:提出了基于概率密度函数的目标材料判别方法,并在不同的数据集上进一步进行了验证。最后,提出了一种新颖的基于人工神经网络的尺度和旋转不变的图像重建方法,以应对由于噪声,旋转或尺度变化而引起的图像失真。设计的神经网络一旦经过样本图像训练,就可以自动处理这些变形,并成功地为测试目标重建校正后的图像。本文开发的技术使用四种不同的常规形状进行测试和验证。矩形,正方形,三角形和圆形。

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