Spatial-- Temporal Binarization Method via Jointly Optimizing Diffusion Kernel and Quantization Threshold for 3-D Surface Imaging

Jiangping Zhu, Jun Luo, Junlin Du,Pei Zhou

IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT(2024)

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摘要
Binary patterns that utilize a diffusion kernel and a fixed quantization threshold to binarize 8-bit sinusoidal fringes are popular in 3-D imaging of dynamic objects by virtue of the fast-switching capability of digital mirror device projectors. Unfortunately, to remove the encoding noise and obtain approximate sinusoidal fringes, a large defocus is generally required for existing binarization methods. This behavior inevitably results in the adopted 3-D measurement system working under a discounted depth of field, while the low signal-to-noise ratio of captured images has an adverse influence on the phase extraction accuracy of commonly adopted high-frequency fringes for practical 3-D reconstruction. In this article, we present a spatial-temporal binary encoding method of jointly optimizing diffusion kernel and quantization threshold for 3-D surface measurement. Our method involves determining the quantization threshold by simulation, searching optimal diffusion kernels in both phase and intensity-domain via particle swarm optimization (PSO) algorithm, and implementing error diffusion (ED)encoding spatially and temporally using the optimized quantization threshold (Opt Q) and diffusion kernel. Finally, one 8-bitsinusoidal fringe is temporally decomposed into multiple (K)1-bit binary patterns, which are nearly in-focus projected to yield approximate sinusoidal pattern in the manner of integral imaging strategy. Comparative experiments verify that the accuracy of our method outperforms the state-of-the-art methods in terms of phase and 3-D measurement accuracy. Additionally, the binary encoding fringe patterns are also to successfully implement dynamic 3-D imaging of a moving arm
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关键词
Encoding,Kernel,Three-dimensional displays,Quantization (signal),Imaging,Phase measurement,Gray-scale,3-D measurement,dynamic 3-D imaging,jointly optimizing,nearly in-focus,spatial-temporal binary encoding method
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