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KLN: A Deep Neural Network Architecture for Keypoint Localization

机译:KLN:用于关键点本地化的深度神经网络架构

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Localization of keypoints on pixel-level precision is an essential step for stitching panoramic images because the keypoints are matching, and their locations are used for computing stitching transformation. We recall the main standard computer vision techniques for keypoint localization and focus on the precise localization. We design a neural network architecture containing an encoder, a latent representation handler, and a decoder, where the encoder is motivated by SIFT. In contrast to domain-agnostic neural network architectures, the developed encoder reflects the scale-space construction as well as the difference of Gaussians estimation used in SIFT. In the benchmark, we show that our architecture has a higher number of keypoints localized with pixel-level precision than other standard and neural network-based approaches.
机译:由于关键点是匹配的,并且关键点的位置用于计算拼接变换,因此关键点的定位在像素级精度上是拼接全景图像的必不可少的步骤。我们回顾了用于关键点定位的主要标准计算机视觉技术,并将重点放在精确的定位上。我们设计了一个神经网络架构,其中包含一个编码器,一个潜在表示处理程序和一个解码器,其中编码器是由SIFT激发的。与领域无关的神经网络体系结构相反,开发的编码器反映了尺度空间构造以及SIFT中使用的高斯估计的差异。在基准测试中,我们显示出与其他基于标准和基于神经网络的方法相比,我们的体系结构具有更多以像素级精度进行本地化的关键点。

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