A Real-time and Registration-free Framework for Dynamic Shape Instantiation
Xiao-Yun Zhou, Guang-Zhong Yang, Su-Lin Lee

TL;DR
This paper introduces a real-time, registration-free framework that reconstructs high-resolution 3D organ shapes from a single 2D image during surgery, enhancing intra-operative guidance without registration complexities.
Contribution
It proposes a novel method combining statistical shape models and regression to achieve real-time 3D shape instantiation without registration, applicable to multiple organs.
Findings
Mean accuracy of 2.19mm on patient data
Computation speed of 1ms
Validated on liver and heart RV studies
Abstract
Real-time 3D navigation during minimally invasive procedures is an essential yet challenging task, especially when considerable tissue motion is involved. To balance image acquisition speed and resolution, only 2D images or low-resolution 3D volumes can be used clinically. In this paper, a real-time and registration-free framework for dynamic shape instantiation, generalizable to multiple anatomical applications, is proposed to instantiate high-resolution 3D shapes of an organ from a single 2D image intra-operatively. Firstly, an approximate optimal scan plane was determined by analyzing the pre-operative 3D statistical shape model (SSM) of the anatomy with sparse principal component analysis (SPCA) and considering practical constraints . Secondly, kernel partial least squares regression (KPLSR) was used to learn the relationship between the pre-operative 3D SSM and a synchronized 2D…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
