Pooling Pyramid Vision Transformer for Unsupervised Monocular Depth Estimation

Qingyu Zhang, Chunyan Wei, Qingxia Li, Xiaosen Tian, Chuanpeng Li
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引用次数: 1

Abstract

Compared with other sensors, high-quality depth estimation based on monocular camera has strong competitiveness and widespread application in intelligent transportation, etc. Although the barrier of training has been greatly lowered by unsupervised learning, most related works are still based on convolutional neural networks (CNNs) that suffer from unbridgeable gaps in the full-stage global information and high-resolution features while extracting multi-scale features. To break this predicament, we attempt to introduce vision transformer. However, the vision transformer with large sequence length due to image embedding brings great challenges to the computational cost. Thus, this work proposes a new pure transformer backbone named pooling pyramid vision transformer (PPViT), simultaneously shrinking out multi-scale features and reducing sequence length used for attention operation. Then, we provide two backbone settings including PPViT10 and PPViT18 whose number of parameters are close to the common ResNet18 and ResNet50, respectively. The experiments on KITTI dataset demonstrate that our work show a great potentiality of improving the capability of model and produce superior results to the previous CNN-based works. Equally important, we have lower latency than the related transformer-based work.
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无监督单目深度估计的池化金字塔视觉变压器
与其他传感器相比,基于单目摄像机的高质量深度估计在智能交通等领域具有很强的竞争力和广泛的应用前景。为了打破这一困境,我们尝试引入视觉转换器。然而,由于图像嵌入导致的大序列长度的视觉变换给计算成本带来了很大的挑战。因此,本文提出了一种新的纯变压器骨架,称为池式金字塔视觉变压器(PPViT),同时缩小了多尺度特征,减少了用于注意力操作的序列长度。然后,我们提供了两个主干设置PPViT10和PPViT18,它们的参数数量分别接近于常见的ResNet18和ResNet50。在KITTI数据集上的实验表明,我们的工作显示出很大的潜力来提高模型的能力,并产生优于以往基于cnn的工作的结果。同样重要的是,我们比相关的基于变压器的工作具有更低的延迟。
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