Local feature detection is a key ingredient of many image processing and computer vision applications, such as visual odometry and localization. Most existing algorithms focus on feature detection from a sharp image. They would thus have degraded performance once the image is blurred, which could happen easily under low-lighting conditions. To address this issue, we propose a simple yet both efficient and effective keypoint detection method that is able to accurately localize the salient keypoints in a blurred image. Our method takes advantages of a novel multi-layer perceptron (MLP) based architecture that significantly improve the detection repeatability for a blurred image. The network is also light-weight and able to run in real-time, which enables its deployment for time-constrained applications. Extensive experimental results demonstrate that our detector is able to improve the detection repeatability with blurred images, while keeping comparable performance as existing state-of-the-art detectors for sharp images.
翻译:本地特征检测是许多图像处理和计算机视觉应用,例如视觉观察测量和定位等的关键成分。大多数现有算法都侧重于从锐利图像中探测特征。一旦图像模糊,它们就会降低性能,这在低亮度条件下很容易发生。为了解决这个问题,我们建议一种简单而高效和有效的关键点检测方法,能够精确地将显要关键点定位在模糊图像中。我们的方法利用了一种新型的多层透视器(MLP)结构的优势,该结构大大改进了模糊图像的可探测性。网络也是轻量级的,能够实时运行,能够用于时间限制的应用。广泛的实验结果表明,我们的探测器能够用模糊图像改进探测的可重复性,同时将类似性功能保留为对锐利图像的现有最先进的探测器。