Recent Transformer-based methods have achieved advanced performance in point cloud registration by utilizing advantages of the Transformer in order-invariance and modeling dependency to aggregate information. However, they still suffer from indistinct feature extraction, sensitivity to noise, and outliers. The reasons are: (1) the adoption of CNNs fails to model global relations due to their local receptive fields, resulting in extracted features susceptible to noise; (2) the shallow-wide architecture of Transformers and lack of positional encoding lead to indistinct feature extraction due to inefficient information interaction; (3) the omission of geometrical compatibility leads to inaccurate classification between inliers and outliers. To address above limitations, a novel full Transformer network for point cloud registration is proposed, named the Deep Interaction Transformer (DIT), which incorporates: (1) a Point Cloud Structure Extractor (PSE) to model global relations and retrieve structural information with Transformer encoders; (2) a deep-narrow Point Feature Transformer (PFT) to facilitate deep information interaction across two point clouds with positional encoding, such that Transformers can establish comprehensive associations and directly learn relative position between points; (3) a Geometric Matching-based Correspondence Confidence Evaluation (GMCCE) method to measure spatial consistency and estimate inlier confidence by designing the triangulated descriptor. Extensive experiments on clean, noisy, partially overlapping point cloud registration demonstrate that our method outperforms state-of-the-art methods.
翻译:最近以变异器为基础的方法利用变异器的优势,在定序和建模上依赖综合信息的基础上,在点云登记方面取得了高效的功能。然而,它们仍然受到不清晰的特征提取、对噪音和外部线的敏感度和外缘的影响。原因如下:(1) 采用有线电视新闻网,因其本地的可接收域而未能模拟全球关系,从而导致容易产生噪音;(2) 由于信息互动效率低下,整个变异器的浅度结构以及缺乏定位编码导致特征提取;(3) 缺乏几何兼容性,导致内流和外部线之间的分类不准确。为了应对上述局限性,建议建立一个名为深层互动转换器(DIT)的新的全面变异器网络,其中包括:(1) 点云结构提取器(PSE),以模拟全球关系,并检索与变异器编码者的结构信息;(2) 深窄点点点点的变异变异器(PFT),以方便两种点云与定位编码之间的深度信息互动,使变异器能够建立全面的联系并直接了解点之间的相对位置;(3) 深度互动变异变换式全面转换器网络网络网络网络网络网络网络网络网络网络网络,以构建系统化系统化方法设计,从而设计信任系统化系统化为系统化。