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首页> 外文期刊>IEEE Transactions on Image Processing >Unified Anomaly Suppression and Boundary Extraction in Laser Radar Range Imagery based on a Joint Curve-Evolution and Expectation-Maximization Algorithm
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Unified Anomaly Suppression and Boundary Extraction in Laser Radar Range Imagery based on a Joint Curve-Evolution and Expectation-Maximization Algorithm

机译:基于联合曲线进化和期望最大化算法的激光雷达测距图像统一的异常抑制和边界提取

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摘要

In this paper, we develop a new unified approach for laser radar range anomaly suppression, range profiling, and segmentation. This approach combines an object-based hybrid scene model for representing the range distribution of the field and a statistical mixture model for the range data measurement noise. The image segmentation problem is formulated as a minimization problem which jointly estimates the target boundary together with the target region range variation and background range variation directly from the noisy and anomaly-filled range data. This formulation allows direct incorporation of prior information concerning the target boundary, target ranges, and background ranges into an optimal reconstruction process. Curve evolution techniques and a generalized expectation-maximization algorithm are jointly employed as an efficient solver for minimizing the objective energy, resulting in a coupled pair of object and intensity optimization tasks. The method directly and optimally extracts the target boundary, avoiding a suboptimal two-step process involving image smoothing followed by boundary extraction. Experiments are presented demonstrating that the proposed approach is robust to anomalous pixels (missing data) and capable of producing accurate estimation of the target boundary and range values from noisy data.
机译:在本文中,我们为激光雷达测距异常抑制,测距分析和分割开发了一种新的统一方法。这种方法结合了用于表示场的范围分布的基于对象的混合场景模型和用于范围数据测量噪声的统计混合模型。图像分割问题被表述为最小化问题,该问题直接从嘈杂和异常填充的距离数据中共同估计目标边界以及目标区域范围变化和背景范围变化。该公式允许将有关目标边界,目标范围和背景范围的先验信息直接合并到最佳重建过程中。曲线演化技术和广义的期望最大化算法被联合用作有效的求解器,以最小化目标能量,从而产生一对成对的对象和强度优化任务。该方法直接且最佳地提取目标边界,避免了涉及图像平滑和边界提取的次优两步过程。实验表明,提出的方法对异常像素(丢失数据)具有鲁棒性,并且能够从噪声数据中准确估算目标边界和范围值。

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