IVCVJul 23, 2021

3D Brain Reconstruction by Hierarchical Shape-Perception Network from a Single Incomplete Image

arXiv:2107.11010v222 citations
AI Analysis

This addresses the problem of incomplete intraoperative imaging for surgeons in minimally-invasive surgeries, though it appears incremental as it builds on existing reconstruction methods.

The paper tackles 3D brain reconstruction from a single incomplete image, proposing a hierarchical shape-perception network (HSPN) that achieves spontaneous shape perception and completion, outperforming other methods in Chamfer distance and PC-to-PC error metrics.

3D shape reconstruction is essential in the navigation of minimally-invasive and auto robot-guided surgeries whose operating environments are indirect and narrow, and there have been some works that focused on reconstructing the 3D shape of the surgical organ through limited 2D information available. However, the lack and incompleteness of such information caused by intraoperative emergencies (such as bleeding) and risk control conditions have not been considered. In this paper, a novel hierarchical shape-perception network (HSPN) is proposed to reconstruct the 3D point clouds (PCs) of specific brains from one single incomplete image with low latency. A branching predictor and several hierarchical attention pipelines are constructed to generate point clouds that accurately describe the incomplete images and then complete these point clouds with high quality. Meanwhile, attention gate blocks (AGBs) are designed to efficiently aggregate geometric local features of incomplete PCs transmitted by hierarchical attention pipelines and internal features of reconstructing point clouds. With the proposed HSPN, 3D shape perception and completion can be achieved spontaneously. Comprehensive results measured by Chamfer distance and PC-to-PC error demonstrate that the performance of the proposed HSPN outperforms other competitive methods in terms of qualitative displays, quantitative experiment, and classification evaluation.

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