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DENSE MATCHING COMPARISON BETWEEN CENSUS AND A CONVOLUTIONAL NEURAL NETWORK ALGORITHM FOR PLANT RECONSTRUCTION

机译:人口普查与植物重建卷积神经网络算法的密集匹配比较

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摘要

3D reconstruction of plants is hard to implement, as the complex leaf distribution highly increases the difficulty level in dense matching. Semi-Global Matching has been successfully applied to recover the depth information of a scene, but may perform variably when different matching cost algorithms are used. In this paper two matching cost computation algorithms, Census transform and an algorithm using a convolutional neural network, are tested for plant reconstruction based on Semi-Global Matching. High resolution close-range photogrammetric images from a handheld camera are used for the experiment. The disparity maps generated based on the two selected matching cost methods are comparable with acceptable quality, which shows the good performance of Census and the potential of neural networks to improve the dense matching.
机译:植物的三维重建难以实现,因为复杂的叶片分布高度增加了密集匹配中的难度水平。半全局匹配已成功应用于恢复场景的深度信息,但是当使用不同的匹配成本算法时可以可变地执行。本文基于半全局匹配测试了两个匹配成本计算算法,人口普查变换和使用卷积神经网络的算法,用于工厂重建。来自手持式相机的高分辨率近距离摄影测量图像用于实验。基于两种选定的匹配成本方法生成的视差图与可接受的质量相当,这表明人口普查的良好性能以及神经网络改善密集匹配的潜力。

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