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Fast Deep Stereo with 2D Convolutional Processing of Cost Signatures

机译:具有成本签名的2D卷积处理的快速深度立体声

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Modern neural network-based algorithms are able to produce highly accurate depth estimates from stereo image pairs, nearly matching the reliability of measurements from more expensive depth sensors. However, this accuracy comes with a higher computational cost since these methods use network architectures designed to compute and process matching scores across all candidate matches at all locations, with floating point computations repeated across a match volume with dimensions corresponding to both space and disparity. This leads to longer running times to process each image pair, making them impractical for real-time use in robots and autonomous vehicles. We propose a new stereo algorithm that employs a significantly more efficient network architecture. Our method builds an initial match cost volume using traditional matching costs that are fast to compute, and trains a network to estimate disparity from this volume. Crucially, our network only employs per-pixel and two-dimensional convolution operations: to summarize the local match information at each location as a lowdimensional feature vector, and to spatially process these "cost-signature" features to produce a dense disparity map. Experimental results on KITTI show that our method delivers competitive accuracy at significantly higher speeds— running at 48 frames per second on a modern GPU.
机译:基于现代神经网络的算法能够从立体图像对生成高度准确的深度估计,几乎与更昂贵的深度传感器的测量可靠性相匹配。但是,这种准确性伴随着较高的计算成本,因为这些方法使用旨在在所有位置的所有候选匹配中计算和处理匹配分数的网络体系结构,并且在匹配体积上重复进行浮点计算,并且尺寸分别对应于空间和视差。这导致处理每个图像对的运行时间更长,这使得它们无法实时用于机器人和自动驾驶汽车。我们提出了一种新的立体声算法,该算法采用了效率更高的网络体系结构。我们的方法使用可快速计算的传统匹配成本来构建初始匹配成本量,并训练网络以从该量估算差异。至关重要的是,我们的网络仅采用每像素和二维卷积运算:将每个位置的本地匹配信息汇总为低维特征向量,并对这些“成本特征”特征进行空间处理以生成密集的视差图。在KITTI上进行的实验结果表明,我们的方法以显着更高的速度提供了具有竞争力的精度-在现代GPU上以每秒48帧的速度运行。

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