IEEE Trans Image Process. 2017 Oct;26(10):5032-5042. doi: 10.1109/TIP.2017.2713942. Epub 2017 Jun 8.
Many creative ideas are being proposed for image sensor designs, and these may be useful in applications ranging from consumer photography to computer vision. To understand and evaluate each new design, we must create a corresponding image processing pipeline that transforms the sensor data into a form, that is appropriate for the application. The need to design and optimize these pipelines is time-consuming and costly. We explain a method that combines machine learning and image systems simulation that automates the pipeline design. The approach is based on a new way of thinking of the image processing pipeline as a large collection of local linear filters. We illustrate how the method has been used to design pipelines for novel sensor architectures in consumer photography applications.
许多创新的创意被提出用于图像传感器设计,这些创意可能在从消费者摄影到计算机视觉等各种应用中都非常有用。为了理解和评估每个新设计,我们必须创建一个相应的图像处理管道,将传感器数据转换为适合应用的形式。设计和优化这些管道是耗时且昂贵的。我们解释了一种结合机器学习和图像系统模拟的方法,该方法可以实现管道设计的自动化。该方法基于将图像处理管道视为大量局部线性滤波器的新思维方式。我们举例说明了如何将该方法用于设计消费者摄影应用中的新型传感器架构的管道。