空间精度和召回率指标评价实例分割算法的性能

Mattis Brummel, Patrick Müller, Alexander Braun
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引用次数: 0

摘要

由于计算机视觉系统在自动驾驶汽车等安全关键应用中可靠地运行至关重要,因此有必要评估其对自然发生的图像扰动的鲁棒性。更具体地说,计算机视觉系统的性能需要与图像质量联系起来,这一点到目前为止还没有得到太多的研究关注。事实上,相机系统的像差在视场范围内总是空间变化的,这可能会影响计算机视觉系统的性能,这取决于局部像差的程度。因此,目标是通过考虑空间域来评估计算机视觉系统在离焦影响下的性能。采用参数化光学模型对大规模自动驾驶数据集进行退化,模拟离焦物理逼真效果下的驾驶场景。利用标准评价指标空间召回指数(SRI)和新的空间精度指数(SPI),将计算机视觉系统在这些退化数据集上的性能与应用光学模型的光学性能进行了比较。实例分割系统的空间性能与光学性能之间存在一定的相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial precision and recall indices to assess the performance of instance segmentation algorithms
Since it is essential for Computer Vision systems to reliably perform in safety-critical applications such as autonomous vehicles, there is a need to evaluate their robustness to naturally occurring image perturbations. More specifically, the performance of Computer Vision systems needs to be linked to the image quality, which hasn’t received much research attention so far. In fact, aberrations of a camera system are always spatially variable over the Field of View, which may influence the performance of Computer Vision systems dependent on the degree of local aberrations. Therefore, the goal is to evaluate the performance of Computer Vision systems under effects of defocus by taking into account the spatial domain. Large-scale Autonomous Driving datasets are degraded by a parameterized optical model to simulate driving scenes under physically realistic effects of defocus. Using standard evaluation metrics, the Spatial Recall Index (SRI) and the new Spatial Precision Index (SPI), the performance of Computer Visions systems on these degraded datasets are compared with the optical performance of the applied optical model. A correlation could be observed between the spatially varying optical performance and the spatial performance of Instance Segmentation systems.
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