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引用次数: 1

摘要

从2D图像/视频或一对2D图像中获取3D信息比使用3D相机更经济、更方便。该系统采用视差深度法从一对称为立体图像的二维图像中获取三维信息。虽然视差深度的概念并不新鲜,但在现实世界中尚未看到重大进展和有用的应用。该系统提出了一种利用特定场景的一对立体图像在毫秒内提取视差图(深度信息)的方法/算法。使用SAD和GRAD联合算法计算视差图的时间分别为25秒和30秒。为了实时实现系统,执行时间需要非常小。为此,本文提出了一种改进算法,通过最小化计算量来减少视差图的计算时间。通过消除不需要的搜索区域(最小化活动搜索区域)来实现视差计算的时间节省。
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Stereo images for depth measurement
Obtaining 3D information from 2D image/video or a pair of 2D images is a way more economical and handy than that of using 3D cameras. The depth by disparity approach to obtain 3D information from a pair of 2D images called as stereo images is used in said system. Though the concept of depth by disparity is not new, the significant progress and useful applications has not been yet seen in the real world. The system proposed presents a method/algorithm to extract the disparity map (Depth information) within milliseconds by using a pair of stereo images of that particular scene. The time taken to calculate disparity map is 25 and 30 seconds using combined SAD and GRAD algorithm. To implement system in real time, the execution time needs to be very small. Thus a modified algorithm is presented in this paper to minimize the time taken to compute the disparity map by minimizing the calculations. The time saving is achieved by eliminating the unwanted search regions (which minimizes active search region) for disparity computation.
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