机器学习核爆特征

Daniel T. Schmitt, Gilbert L. Peterson
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引用次数: 2

摘要

基于爆炸体积三维模型的核爆炸当量估算方程比基于半径的估算具有更低的不确定性。为了准确地收集大气爆炸体积模型的数据,需要从2D图像中构建3D表示。大多数三维重建算法使用SIFT(尺度不变特征变换)特征检测算法,该算法在具有连续角度集合的特征丰富的对象上效果最好。这些假设不同于只有3个观点的核爆炸档案。本文将基于傅里叶分析和五种边缘检测算法的图像派生的300维降至可管理的数量,以检测可用于关联不同视点视频进行3D重建的热点。此外,实验测试了直方图均衡化是否提高了这些特征的检测,使用四个内核大小传递这些特征。使用主成分分析(PCA)降维、前向子集选择、ReliefF和FCBF (Fast Correlation-Based Filter)与Mahalanobis距离分类器相结合,找到维度、核大小和过滤的最佳组合,以检测热点。结果表明,检测热点的准确率为90%,误报率为1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning nuclear detonation features
Nuclear explosion yield estimation equations based on a 3D model of the explosion volume will have a lower uncertainty than radius based estimation. To accurately collect data for a volume model of atmospheric explosions requires building a 3D representation from 2D images. The majority of 3D reconstruction algorithms use the SIFT (scale-invariant feature transform) feature detection algorithm which works best on feature-rich objects with continuous angular collections. These assumptions are different from the archive of nuclear explosions that have only 3 points of view. This paper reduces 300 dimensions derived from an image based on Fourier analysis and five edge detection algorithms to a manageable number to detect hotspots that may be used to correlate videos of different viewpoints for 3D reconstruction. Furthermore, experiments test whether histogram equalization improves detection of these features using four kernel sizes passed over these features. Dimension reduction using principal components analysis (PCA), forward subset selection, ReliefF, and FCBF (Fast Correlation-Based Filter) are combined with a Mahalanobis distance classifiers to find the best combination of dimensions, kernel size, and filtering to detect the hotspots. Results indicate that hotspots can be detected with hit rates of 90% and false alarms i 1%.
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