We present a formulation of the relative depth estimation from a single image problem, as a ranking problem. By reformulating the problem this way, we were able to utilize literature on the ranking problem, and apply the existing knowledge to achieve better results. To this end, we have introduced a listwise ranking loss borrowed from ranking literature, weighted ListMLE, to the relative depth estimation problem. We have also brought a new metric which considers pixel depth ranking accuracy, on which our method is stronger.
翻译:我们从单一图像问题提出相对深度估算的公式,作为一个排名问题。通过这样重新表述问题,我们得以利用关于排名问题的文献,并运用现有知识取得更好的结果。为此,我们引入了从排名文献(加权列表MLE)中借用的列表式排序损失,以了解相对深度估算问题。我们还引入了一个新的指标,其中考虑到像素深度排序的准确性,我们的方法在这种精确度上更强。