论文标题
可区分的镜头:复合镜头搜索玻璃表面和对象检测的材料
The Differentiable Lens: Compound Lens Search over Glass Surfaces and Materials for Object Detection
论文作者
论文摘要
大多数相机镜头系统都是孤立设计的,与下游计算机视觉方法分开。最近,与图像采集和处理管道的其他组件一起设计镜头的联合优化方法(尤其是下游神经网络)已提高了成像质量或在视觉任务上的性能更好。但是,这些现有方法仅优化了镜头参数的一部分,并且在其分类性质的情况下无法优化玻璃材料。在这项工作中,我们开发了一个可靠的球形镜头模拟模型,该模型可准确捕获几何畸变。我们提出了一种优化策略,以应对镜头设计的挑战 - 臭名昭著的非凸损失功能景观和许多制造限制 - 在联合优化任务中受到加剧。具体而言,我们引入了量化的连续玻璃变量,以促进端到端设计环境中玻璃材料的优化和选择,并将其与精心设计的约束以支持生产性。在汽车对象检测中,尽管将图像质量显着降低,但即使将设计简化为两元素或三元素镜头,我们也报告了比现有设计的改进性能。
Most camera lens systems are designed in isolation, separately from downstream computer vision methods. Recently, joint optimization approaches that design lenses alongside other components of the image acquisition and processing pipeline -- notably, downstream neural networks -- have achieved improved imaging quality or better performance on vision tasks. However, these existing methods optimize only a subset of lens parameters and cannot optimize glass materials given their categorical nature. In this work, we develop a differentiable spherical lens simulation model that accurately captures geometrical aberrations. We propose an optimization strategy to address the challenges of lens design -- notorious for non-convex loss function landscapes and many manufacturing constraints -- that are exacerbated in joint optimization tasks. Specifically, we introduce quantized continuous glass variables to facilitate the optimization and selection of glass materials in an end-to-end design context, and couple this with carefully designed constraints to support manufacturability. In automotive object detection, we report improved detection performance over existing designs even when simplifying designs to two- or three-element lenses, despite significantly degrading the image quality.