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Multi-scale CNN Stereo and Pattern Removal Technique for Underwater Active Stereo System

机译:水下主动立体系统的多尺度CNN立体和图案去除技术

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Demands on capturing dynamic scenes of underwater environments are rapidly growing. Passive stereo is applicable to capture dynamic scenes, however the shape with textureless surfaces or irregular reflections cannot be recovered by the technique. In our system, we add a pattern projector to the stereo camera pair so that artificial textures are augmented on the objects. To use the system at underwater environments, several problems should be compensated, i.e., refraction, disturbance by fluctuation and bubbles. Further, since surface of the objects are interfered by the bubbles, projected patterns, etc., those noises and patterns should be removed from captured images to recover original texture. To solve these problems, we propose three approaches; a depth-dependent calibration, Convolutional Neural Network(CNN)-stereo method and CNN-based texture recovery method. A depth-dependent calibration I sour analysis to find the acceptable depth range for approximation by center projection to find the certain target depth for calibration. In terms of CNN stereo, unlike common CNN based stereo methods which do not consider strong disturbances like refraction or bubbles, we designed a novel CNN architecture for stereo matching using multi-scale information, which is intended to be robust against such disturbances. Finally, we propose a multi-scale method for bubble and a projected-pattern removal method using CNNs to recover original textures. Experimental results are shown to prove the effectiveness of our method compared with the state of the art techniques. Furthermore, reconstruction of a live swimming fish is demonstrated to confirm the feasibility of our techniques.
机译:捕获水下环境动态场景的需求正在迅速增长。无源立体声适用于捕获动态场景,但是该技术无法恢复具有无纹理表面或不规则反射的形状。在我们的系统中,我们向立体相机对添加了一个图案投影仪,以便在对象上增加人造纹理。为了在水下环境中使用该系统,应该补偿一些问题,即折射,起伏和气泡引起的干扰。此外,由于物体的表面受到气泡,投影图案等的干扰,因此应该从捕获的图像中去除那些噪声和图案以恢复原始纹理。为了解决这些问题,我们提出了三种方法:基于深度的标定,卷积神经网络(CNN)-立体声方法和基于CNN的纹理恢复方法。深度相关的校准I源分析,以找到可接受的深度范围以通过中心投影进行近似,以找到特定的目标深度进行校准。就CNN立体声而言,与不考虑诸如折射或气泡之类的强干扰的普通基于CNN的立体声方法不同,我们设计了一种新颖的CNN体​​系结构,用于使用多尺度信息进行立体声匹配,目的是针对此类干扰具有鲁棒性。最后,我们提出了一种用于气泡的多尺度方法和一种使用CNN来恢复原始纹理的投影图案去除方法。实验结果表明,与现有技术相比,我们的方法是有效的。此外,还演示了一条活体游泳鱼的重建,以证实我们技术的可行性。

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