When dynamic objects are captured by a camera, motion blur inevitably occurs. Such a blur is sometimes considered as just a noise, however, it sometimes gives an important effect to add dynamism in the scene for photographs or videos. Unlike the similar effects, such as defocus blur, which is now easily controlled even by smartphones, motion blur is still uncontrollable and makes undesired effects on photographs. In this paper, an unified framework to add motion blur on per-object basis is proposed. In the method, multiple frames are captured without motion blur and they are accumulated to create motion blur on target objects. To capture images without motion blur, shutter speed must be short, however, it makes captured images dark, and thus, a sensor gain should be increased to compensate it. Since a sensor gain causes a severe noise on image, we propose a color compensation algorithm based on non-linear filtering technique for solution. Another contribution is that our technique can be used to make HDR images for fast moving objects by using multi-exposure images. In the experiments, effectiveness of the method is confirmed by ablation study using several data sets.
翻译:当摄像头拍摄动态物体时,运动将不可避免地模糊起来。这种模糊有时被视为仅仅是一种噪音,但有时会给照片或录像的场景增加活力带来重要效果。与分散焦点模糊等类似效果不同,这种模糊现在即使智能手机也很容易控制,运动模糊仍然无法控制,对照片产生不理想的影响。在本文中,提议了一个统一框架,在每个对象的基础上添加运动模糊;在这种方法中,多个框架被捕获而没有运动模糊,它们积累起来,在目标对象上造成运动模糊。但是,在不运动模糊的情况下捕获图像的速度必须很短,但拍摄图像的速度必须很暗,因此,传感器的增益应增加来补偿它。由于传感器的增益在图像上引起强烈的噪音,我们建议基于非线性过滤技术的颜色补偿算法来解决问题。另一个贡献是,我们的技术可以用来利用多波照图像使HDIS图像快速移动对象。在实验中,方法的有效性通过几个数据集的ABLL研究得到证实。