作者: Jean-Louis Dillenseger , Geoffroy Cormier , Yannick Wend Kuni Zoetgnande , Alain-Jérôme Fougères
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摘要: In the context of a localization and tracking application, we developed stereo vision system based on cheap low-resolution 80x60 pixels thermal cameras. We proposed threefold sub-pixel matching framework (called ST for Subpixel Thermal): 1) robust features extraction method phase congruency, 2) rough these in pixel precision, 3) refined accuracy local coherence. performed experiments our very images (acquired using manufactured) as high-resolution from benchmark dataset. Even if congruency computation time is high, it was able to extract two times more than state-of-the-art methods such ORB or SURF. modified version correlation applied feature space matching. Using simulated stereo, investigated how threshold sub-image size can influence accuracy. then proved that given setup resolution images, being wrong 1 leads 500 mm error Z position point. Finally, showed could four matches baseline + OpenCV KNN images. Moreover, were robust. More precisely, when projecting points standing person, got standard deviation 300 gave 1000 mm.