差分匹配约束

B. Triggs
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引用次数: 19

摘要

我们在投影视觉中引入了近间隔相机的有限差分展开,并用它来推导有限位移投影匹配张量和约束的微分模拟。结果比Astrom & Heyden基于时间导数的“连续时间匹配约束”更简单、更通用、更容易使用。我们建议如何使用“张量跟踪”的形式化-沿着图像序列对固定基图像传播匹配关系。我们将其与非线性张量估计器联系起来,并展示了如何沿着序列“展开优化循环”允许简单的“线性n点”更新估计随着序列的进行迅速收敛到统计上接近最优的、接近一致的张量估计。我们还给出了与离散方法相比,何时差分展开可能是值得的指导方针。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential matching constraints
We introduce a finite difference expansion for closely spaced cameras in projective vision, and use it to derive differential analogues of the finite-displacement projective matching tensors and constraints. The results are simpler, more general and easier to use than Astrom & Heyden's time-derivative based 'continuous time matching constraints'. We suggest how to use the formalism for 'tensor tracking'-propagation of matching relations against a fixed base image along an image sequence. We relate this to non-linear tensor estimators and show how 'unwrapping the optimization loop' along the sequence allows simple 'linear n point' update estimates to converge rapidly to statistically near-optimal, near-consistent tensor estimates as the sequence proceeds. We also give guidelines as to when difference expansion is likely to be worthwhile as compared to a discrete approach.
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来源期刊
CiteScore
16.50
自引率
0.00%
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