基于跳跃注意的生成对抗网络的点云上采样

Weiqiang Lv, Hanjie Wen, Hu Chen
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引用次数: 1

摘要

点云是一种非常流行的表示3D数据的方式。各种先进设备的发展使它很容易获得。然而,获取的点云数据通常具有点数不易控制、稀疏和不均匀等特点。这些特点使得获取的点云数据难以直接应用于各种任务。为了有效地解决这些问题,我们提出了一种基于生成对抗网络的点云上采样预处理方法。可以很容易地将点云中的点数量上采样到我们想要的值,并且获得的点云数据可以在保持原始轮廓的同时非常均匀。详细地说,我们在我们的生成器中引入了Skip-attention,它允许网络有效地融合点云的本地和全局特征,除此之外,我们还使用PointNet-Mix作为我们的鉴别器,这是一个简单而轻量级的结构,可以很好地与我们的生成器配合使用。大量的定性和定量实验表明,用我们的方法获得的上采样数据可以达到同样有竞争力的结果。
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Point Cloud Upsampling by Generative Adversarial Network with Skip-attention
Point clouds are a very popular way of representing 3D data. The development of various advanced devices has made it easily accessible. However, the acquired point cloud data usually has the following characteristics: the number of points is not easily controlled, sparse and non-uniform. These characteristics make it difficult to apply the acquired point cloud data directly to various tasks. To effectively address these issues, we propose a new method based on generative adversarial networks to implement upsampling pre-processing of point clouds. It is possible to easily upsample the number of points in the point cloud to our desired value and the obtained point cloud data can be very homogeneous while maintaining the original contours. In detail, we have introduced Skip-attention to our generator, which allows the network to effectively fuse the local and global features of the point cloud, and in addition to this, we have used PointNet-Mix as our discriminator, a simple and lightweight structure that works well with our generator. Extensive qualitative and quantitative experiments have demonstrated that the upsampling data obtained using our method can achieve equally competitive results.
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