Perspective-Consistent Multifocus Multiview 3D Reconstruction of Small Objects

Hengjia Li, Chuong V. Nguyen
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引用次数: 4

Abstract

Image-based 3D reconstruction or 3D photogrammetry of small-scale objects including insects and biological specimens is challenging due to the use of high magnification lens with inherent limited depth of field, and the object's fine structures and complex surface properties. Due to these challenges, traditional 3D reconstruction techniques cannot be applied without suitable image pre-processings. One such preprocessing technique is multifocus stacking that combines a set of partially focused images captured from the same viewing angle to create a single in-focus image. Traditional multifocus image capture uses a camera on a macro rail. Furthermore, the scale and shift are not properly considered by multifocus stacking techniques. As a consequence, the resulting in-focus images contain artifacts that violate perspective image formation. A 3D reconstruction using such images will fail to produce an accurate 3D model of the object. This paper shows how this problem can be solved effectively by a new multifocus stacking procedure which includes a new Fixed-Lens Multifocus Capture and camera calibration for image scale and shift. Initial experimental results are presented to confirm our expectation and show that the camera poses of fixed-lens images are at least 3-times less noisy than those of conventional moving lens images.
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视角一致的多焦点多视角小物体三维重建
基于图像的三维重建或三维摄影测量包括昆虫和生物标本在内的小尺度物体,由于使用高倍率镜头,固有的景深有限,以及物体的精细结构和复杂的表面特性,具有挑战性。由于这些挑战,传统的三维重建技术如果没有适当的图像预处理就无法应用。其中一种预处理技术是多焦点叠加,它将从相同视角捕获的一组部分聚焦的图像组合在一起,形成一个单一的聚焦图像。传统的多焦点图像捕获使用微距导轨上的相机。此外,多焦点叠加技术没有很好地考虑尺度和位移。因此,产生的聚焦图像包含违反透视图像形成的伪影。使用这样的图像进行三维重建将无法产生物体的精确三维模型。本文介绍了如何通过一种新的多焦点叠加方法有效地解决这一问题,该方法包括一种新的固定镜头多焦点捕获和图像缩放和移位的相机校准。初步的实验结果证实了我们的预期,并表明固定镜头图像的相机姿态比传统的运动镜头图像至少少3倍的噪声。
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