Tl-深度:基于塔式连接和拉普拉斯滤波残差补全的单目深度估计

Qi Zhang, Yuqin Song, Hui Lou
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引用次数: 0

摘要

单目深度估计在计算机视觉和机器人应用中至关重要,包括定位、绘图和三维物体检测。近年来,对大量数据建模的监督学习算法在深度估计方面取得了成功。然而,在监督训练中,获取密集的地面真实深度标签仍然是一个挑战。因此,使用单目图像序列训练的无监督方法得到了广泛关注。然而,大多数现有模型的深度估计结果往往会产生模糊的边缘。因此,我们提出了多种有效的改进策略来构建深度估计网络 TL-Depth。(1) 我们提出了一种塔式连接结构,利用卷积处理促进特征融合,实现像素的精确语义分类,得到更精确的深度结果。(2) 我们采用拉普拉斯滤波残差来关注边界信息,并增强细节结果。(3) 在特征提取阶段,通过将多个池化激励嵌入卷积层来使用它们。这样既减少了冗余信息,又增强了网络的特征提取能力。在 KITTI 数据集和 Make3D 数据集上的实验结果表明,与现有方法相比,该方法取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tl-depth: monocular depth estimation based on tower connections and Laplacian-filtering residual completion

Tl-depth: monocular depth estimation based on tower connections and Laplacian-filtering residual completion

Monocular depth estimation is essential in computer vision and robotics applications, including localization, mapping, and 3D object detection. In recent years, supervised learning algorithms that model large amounts of data have been successful in depth estimation. However, obtaining dense ground truth depth labels remains a challenge in supervised training. Therefore, unsupervised methods trained using monocular image sequences have gained wider attention. However, the depth estimation results of most existing models often produce blurred edges. Therefore, we propose various effective improvement strategies to construct a depth estimation network TL-Depth. (1) We propose a tower connection structure that utilizes convolutional processing to facilitate feature fusion, achieve precise semantic classification of pixels, and yield more accurate depth results. (2) We employ a Laplacian-filtering residual to focus on boundary information and enhance detailed results. (3) During the feature extraction stage, multiple pooling excitations are used by embedding them in the convolutional layer. This reduces redundant information while enhancing the network’s feature extraction capability. The experimental results on the KITTI dataset and the Make3D dataset demonstrate that this method achieves good results compared to current methods.

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