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首页> 外文期刊>Arabian Journal for Science and Engineering >Multi-scale Curvature-Based Robust Hashing for Vector Model Retrieval and Authentication
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Multi-scale Curvature-Based Robust Hashing for Vector Model Retrieval and Authentication

机译:基于多尺度曲率的鲁棒散列向量模型的检索和认证

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摘要

In vector model application fields (such as high-capacity, high-precision GIS vector mapping, and CAD drawings), security technologies for authentication and retrieval have recently become necessary. In this paper, we propose a unique, multi-scale, curvature-based perceptual vector model hashing method with hierarchical authentication, superior robustness, and superior security. In our hashing method, multi-curvature activity energies on multi-scale models are obtained for all polylines and polygons using radius curvature, turning angle curvature, and Gaussian curvature, which are invariant to rigid motion and robust to shape deformation. Following this, we generate multidimensional binary hash values by random mapping with partial exponential Bell polynomials and by Lloyd-Max quantization. Experimental results confirm that our method reduces the distance error of object attacks by 0.001-0.068 and improves both the unique probability by about 0.014, and the differential entropy by 0.875-2.149 compared with a conventional method.
机译:在矢量模型应用领域(例如大容量,高精度GIS矢量地图和CAD图)中,用于身份验证和检索的安全技术近来已成为必需。在本文中,我们提出了一种独特的,多尺度,基于曲率的感知矢量模型哈希方法,该方法具有分层身份验证,出色的鲁棒性和出色的安全性。在我们的哈希方法中,使用半径曲率,转弯角曲率和高斯曲率为所有多段线和多边形获得了多尺度模型上的多曲率活动能量,这些曲率活动能量对于刚体运动是不变的,对于形状变形是鲁棒的。接下来,我们通过使用局部指数Bell多项式的随机映射和Lloyd-Max量化生成多维二进制哈希值。实验结果证明,与传统方法相比,该方法可将目标攻击的距离误差降低0.001-0.068,并将独特概率提高约0.014,将差分熵提高0.875-2.149。

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