A novel unsupervised outlier score, which can be embedded into graph based dimensionality reduction techniques, is presented in this work. The score uses the directed nearest neighbor graphs of those techniques. Hence, the same measure of similarity that is used to project the data into lower dimensions, is also utilized to determine the outlier score. The outlier score is realized through a weighted normalized entropy of the similarities. This score is applied to road infrastructure images. The aim is to identify newly observed infrastructures given a pre-collected base dataset. Detecting unknown scenarios is a key for accelerated validation of autonomous vehicles. The results show the high potential of the proposed technique. To validate the generalization capabilities of the outlier score, it is additionally applied to various real world datasets. The overall average performance in identifying outliers using the proposed methods is higher compared to state-of-the-art methods. In order to generate the infrastructure images, an openDRIVE parsing and plotting tool for Matlab is developed as part of this work. This tool and the implementation of the entropy based outlier score in combination with Uniform Manifold Approximation and Projection are made publicly available.
翻译:在这项工作中展示了一个新的未经监督的外部分数,可以嵌入基于图形的维度减少技术中。分数使用这些技术的近距离直近图。因此,将数据投射到较低维度的类似度也用于确定离子分数。差分通过一个加权的归正的正正正方方方位实现。这个分数应用于公路基础设施图像。目的是根据预先收集的基础数据集,确定新观测到的基础设施。检测未知的情景是加速自动车辆验证的关键。结果显示了拟议技术的高度潜力。为了验证离子分的通用能力,它被进一步应用到各种真实的世界数据集中。使用拟议方法确定离子的总平均性能比最新方法要高。为了生成基础设施图像,Matlab的开放式DRIV对等和绘图工具是这项工作的一部分。该工具以及基于离子值的离子分数的落实与统一Manfricrogrogm 和项目是公开制作的。