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Depth from Small Motion using Rank-1 Initialization

机译:使用Rank-1初始化从小运动深度

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摘要

Depth from Small Motion (DfSM) (Ha et al., 2016) is particularly interesting for commercial handheld devices because it allows the possibility to get depth information with minimal user effort and cooperation. Due to speed and memory issue on these devices, the self calibration optimization of the method using Bundle Adjustment (BA) need as little as 10-15 images. Therefore, the optimization tends to take many iterations to converge or may not converge at all in some cases. This work propose a robust initialization for the bundle adjustment using the rank-1 factorization method (Tomasi and Kanade, 1992), (Aguiar and Moura, 1999a). We create a constraint matrix that is rank-1 in a noiseless situation, then use SVD to compute the inverse depth values and the camera motion. We only need about quarter fraction of the bundle adjustment iteration to converge. We also propose grided feature extraction technique so that only important and small features are tracked all over the image frames. This also ensure speedup in the full execution time on the mobile device. For the experiments, we have documented the execution time with the proposed Rank-1 initialization on two mobile device platforms using optimized accelerations with CPU-GPU co-processing. The combination of Rank 1-BA generates more robust depth-map and is significantly faster than using BA alone.
机译:来自小型运动的深度(DFSM)(HA等,2016)对商业手持设备特别有趣,因为它允许有可能获得最小的用户努力和合作的深度信息。由于这些设备上的速度和内存问题,使用捆绑调整(BA)的方法的自校准优化需要只需10-15个图像。因此,在某些情况下,优化倾向于采取许多迭代迭代或可能不会收敛。这项工作提出了一种鲁棒初始化用于使用秩1因式分解方法(Tomasi的和奏,1992)(阿吉亚尔和莫拉,1999年)的束调整。我们在无噪声情况下创建一个约束矩阵,然后使用SVD来计算逆深度值和相机运动。我们只需要大约四分之一的捆绑调整迭代来收敛。我们还提出了窗玻璃特征提取技术,以便只在图像帧上追踪重要性和小功能。这也确保在移动设备上的完整执行时间中加速。对于实验,我们通过使用具有CPU-GPU协同处理的优化加速度,在两个移动设备平台上记录了执行时间。等级1-BA的组合产生更强大的深度图,并且比单独使用BA更快。

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