论文标题
热视频的像素运动脱毛
Pixel-Wise Motion Deblurring of Thermal Videos
论文作者
论文摘要
未冷却的微型计量机可以通过对现场辐射的“热量”成像,可以使机器人能够在没有可见照明的情况下看到。尽管在黑暗中看到这种能力,但这些传感器仍会遭受明显的运动模糊。这限制了他们在机器人系统上的应用。如本文所述,这种运动模糊是由于每个像素的热惯性引起的。这意味着传统的运动脱毛技术依赖于识别适当的空间模糊内核来执行空间反卷积,因此无法在热摄像机图像上可靠地执行动作DEBLUR。为了解决这个问题,本文提出了将热惯性在单个像素上的效果逆转至少绝对的收缩和选择算子(LASSO)问题,我们可以使用二次编程求解器迅速解决。通过利用稀疏性和高框架速率,这种按像素的套索配方能够在不使用任何空间信息的情况下恢复热视频的运动脱毛帧。为了将其质量与最新的基于可见的摄像头脱毛方法进行比较,本文评估了一组预先训练的对象检测器家族在由不同的脱布算法恢复的一组图像上的性能。所有评估的对象探测器在由提出的算法恢复的图像上,而不是任何其他经过测试过的最先进的方法进行系统地进行的。
Uncooled microbolometers can enable robots to see in the absence of visible illumination by imaging the "heat" radiated from the scene. Despite this ability to see in the dark, these sensors suffer from significant motion blur. This has limited their application on robotic systems. As described in this paper, this motion blur arises due to the thermal inertia of each pixel. This has meant that traditional motion deblurring techniques, which rely on identifying an appropriate spatial blur kernel to perform spatial deconvolution, are unable to reliably perform motion deblurring on thermal camera images. To address this problem, this paper formulates reversing the effect of thermal inertia at a single pixel as a Least Absolute Shrinkage and Selection Operator (LASSO) problem which we can solve rapidly using a quadratic programming solver. By leveraging sparsity and a high frame rate, this pixel-wise LASSO formulation is able to recover motion deblurred frames of thermal videos without using any spatial information. To compare its quality against state-of-the-art visible camera based deblurring methods, this paper evaluated the performance of a family of pre-trained object detectors on a set of images restored by different deblurring algorithms. All evaluated object detectors performed systematically better on images restored by the proposed algorithm rather than any other tested, state-of-the-art methods.