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DEEP LEARNING FOR LOWTEXTURED IMAGE MATCHING

机译:深度学习,实现低图像匹配

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Low-textured objects pose challenges for an automatic 3D model reconstruction. Such objects are common in archeological applications of photogrammetry. Most of the common feature point descriptors fail to match local patches in featureless regions of an object. Hence, automatic documentation of the archeological process using Structure from Motion (SfM) methods is challenging. Nevertheless, such documentation is possible with the aid of a human operator. Deep learning-based descriptors have outperformed most of common feature point descriptors recently. This paper is focused on the development of a new Wide Image Zone Adaptive Robust feature Descriptor (WIZARD) based on the deep learning. We use a convolutional auto-encoder to compress discriminative features of a local path into a descriptor code. We build a codebook to perform point matching on multiple images. The matching is performed using the nearest neighbor search and a modified voting algorithm. We present a new “Multi-view Amphora” (Amphora) dataset for evaluation of point matching algorithms. The dataset includes images of an Ancient Greek vase found at Taman Peninsula in Southern Russia. The dataset provides color images, a ground truth 3D model, and a ground truth optical flow. We evaluated the WIZARD descriptor on the “Amphora” dataset to show that it outperforms the SIFT and SURF descriptors on the complex patch pairs.
机译:低质感对象对自动3D模型重建提出了挑战。这些对象在摄影测量学的考古应用中很常见。大多数通用特征点描述符无法匹配对象无特征区域中的局部面片。因此,使用运动结构(SfM)方法自动记录考古过程具有挑战性。然而,在操作人员的帮助下,这样的文档是可能的。最近,基于深度学习的描述符的性能超过了大多数常见的特征点描述符。本文着重于基于深度学习的新型宽图像区域自适应鲁棒特征描述符(WIZARD)的开发。我们使用卷积自动编码器将本地路径的判别特征压缩为描述符代码。我们构建一个密码本,以对多个图像执行点匹配。使用最近邻居搜索和修改的投票算法执行匹配。我们提出了一个新的“多视图油罐”(Amphora)数据集,用于评估点匹配算法。数据集包括在俄罗斯南部塔曼半岛发现的古希腊花瓶的图像。数据集提供彩色图像,地面真实3D模型和地面真实光流。我们对“ Amphora”数据集上的WIZARD描述符进行了评估,以表明它优于复杂补丁对上的SIFT和SURF描述符。

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