Challenging illumination conditions (low light, underexposure and overexposure) in the real world not only cast an unpleasant visual appearance but also taint the computer vision tasks. Existing light adaptive methods often deal with each condition individually. What is more, most of them often operate on a RAW image or over-simplify the camera image signal processing (ISP) pipeline. By decomposing the light transformation pipeline into local and global ISP components, we propose a lightweight fast Illumination Adaptive Transformer (IAT) which comprises two transformer-style branches: local estimation branch and global ISP branch. While the local branch estimates the pixel-wise local components relevant to illumination, the global branch defines learnable quires that attend the whole image to decode the parameters. Our IAT could also conduct both object detection and semantic segmentation under various light conditions. We have extensively evaluated IAT on multiple real-world datasets on 2 low-level tasks and 3 high-level tasks. With only 90k parameters and 0.004s processing speed (excluding high-level module), our IAT has consistently achieved superior performance over SOTA. Code is available at https://github.com/cuiziteng/IlluminationAdaptive-Transformer.
翻译:在现实世界中,有挑战性的照明条件(低光、接触不足和过度接触)在现实世界中不仅呈现出令人不愉快的视觉外观,而且污染了计算机的视觉任务。现有的光适应方法往往针对每个条件。此外,大多数光适应方法往往针对每个条件。此外,它们往往在RAW图像上操作,或者过度简化相机图像信号处理管道。通过将光转换管道分解成本地和全球ISP组件,我们提议建立一个轻量快速光化适应变异器(IAT),它由两个变异器式的分支组成:地方估算分支和全球ISP分支。虽然当地分支估算出与照明相关的平ixel-with本地组成部分,但全球分支则定义了包含整个图像以解码参数的可学习设备。我们的IAT还可以在不同光条件下进行物体探测和语义分解。我们广泛评估了多个关于2个低层次任务和3个高层次任务的真实世界数据集的IAT。只有90k以上参数和0.004s 处理速度(不包括高级Atregi/TA级模模模模模模模模模模),我们IATAT系统始终可以实现的高级业绩。