一种基于自动聚类的二维图像深度估计方法

Muhammad Awais Shoukat, Allah Bux Sargano, Z. Habib, L. You
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引用次数: 0

摘要

本文研究了单幅二维图像的深度估计问题。由于其在工业中的各种应用,这是一个非常重要的问题。以前的基于学习的方法是基于一个关键的假设,即具有光度相似性的彩色图像可能呈现相似的深度结构。然而,这些方法在整个数据集中使用手工制作的特征来寻找相应的图像,这是一个非常繁琐和低效的过程。为了克服这个问题,我们提出了一种基于聚类的算法,用于使用迁移学习对单个2D图像进行深度估计。为了实现这一点,使用K-means聚类算法将图像分类到聚类中,并通过预训练的深度学习模型(即ResNet-50)提取特征。在聚类后,嵌入了替换特征向量的有效步骤,在不影响精度的前提下加快聚类速度。然后,根据图像的相关值,从最匹配的聚类中检索与输入图像结构相似的图像。然后,利用检索到的候选深度图像使用加权相关平均(WCA)初始化查询图像的先验深度。最后,利用交叉双边滤波去除变化,提高了估计深度。为了评估算法的性能,在NYU v2和Make3D两个基准数据集上进行了实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An automatic cluster-based approach for depth estimation of single 2D images
In this paper, the problem of single 2D image depth estimation is considered. This is a very important problem due to its various applications in the industry. Previous learning-based methods are based on a key assumption that color images having photometric resemblance are likely to present similar depth structure. However, these methods search the whole dataset for finding corresponding images using handcrafted features, which is quite cumbersome and inefficient process. To overcome this, we have proposed a clustering-based algorithm for depth estimation of a single 2D image using transfer learning. To realize this, images are categorized into clusters using K-means clustering algorithm and features are extracted through a pre-trained deep learning model i.e., ResNet-50. After clustering, an efficient step of replacing feature vector is embedded to speedup the process without compromising on accuracy. After then, images with similar structure as an input image, are retrieved from the best matched cluster based on their correlation values. Then, retrieved candidate depth images are employed to initialize prior depth of a query image using weighted-correlation-average (WCA). Finally, the estimated depth is improved by removing variations using cross-bilateral-filter. In order to evaluate the performance of proposed algorithm, experiments are conducted on two benchmark datasets, NYU v2 and Make3D.
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