Interval Extensions of Signed Distance Functions: iSDF-reps and Reliable Membership Classification

Author(s):  
Duane Storti ◽  
Chris Finley ◽  
Mark Ganter

This paper considers the problem of inferring the geometry of an object from values of the signed distance sampled on a uniform grid. The problem is motivated by the desire to effectively and efficiently model objects obtained by 3D imaging technology such as magnetic resonance, computed tomography, and positron emission tomography. Techniques recently developed for automated segmentation convert intensity to signed distance, and the voxel structure imposes the uniform sampling grid. The specification of the signed distance function (SDF) throughout the ambient space would provide an implicit and function-based representation (f-rep) model that uniquely specifies the object, and we refer to this particular f-rep as the signed distance function representation (SDF-rep). However, a set of uniformly sampled signed distance values may uniquely determine neither the distance function nor the shape of the object. Here, we employ essential properties of the signed distance to construct the upper and lower bounds on the allowed variation in signed distance, which combine to produce interval-valued extensions of the signed distance function. We employ an interval extension of the signed distance function as an interval SDF-rep that defines the range of object geometries that are consistent with the sampled SDF data. The particular interval extensions considered include a tight global extension and more computationally efficient local extensions that provide useful criteria for root exclusion/isolation. To illustrate a useful application of the interval bounds, we present a reliable approach to top-down octree membership classification for uniform samplings of signed distance functions.

Author(s):  
Duane Storti ◽  
Mark Ganter

This paper considers the problem of inferring the geometry of an object from values of the signed distance sampled on a uniform grid. The problem is motivated by the desire to effectively and efficiently model objects obtained by 3D imaging technology that is now ubiquitous in medical diagnostics. Recently developed techniques for automated segmentation convert intensity to signed distance, and the voxel structure imposes the uniform sampling grid. While specification of the signed distance function throughout the ambient space would provide an implicit model that uniquely specifies the object, a set of uniformly sampled signed distance values may uniquely determine neither the distance function nor the shape of the object. Here we employ essential properties of the signed distance to construct upper and lower bounds on the allowed variation in signed distance in 1, 2, and 3 dimensions. The bounds are combined to produce interval-valued extensions of the signed distance function including a tight global extension and more computationally efficient local bounds that provide useful criteria for root exclusion/isolation.


2021 ◽  
Author(s):  
Csaba Bálint ◽  
Mátyás Kiglics

Sphere tracing is a common raytracing technique used for rendering implicit surfaces defined by a signed distance function (SDF). However, these distance functions are often expensive to compute, prohibiting several real-time applications despite recent efforts to accelerate it. This paper presents a method to precompute a slightly augmented distance field that hugely accelerates rendering. This novel method called quadric tracing supports two configurations: (i) accelerating raytracing without losing precision, so the original SDF is still needed; (ii) entirely replacing the SDF and tracing an interpolated surface. Quadric tracing can offer 20% to 100% speedup in rendering static scenes and thereby amortizing the slowdown caused by the complexity of the geometry.


2012 ◽  
Author(s):  
Daniel B. Kubacki ◽  
Huy Q. Bui ◽  
S. Derin Babacan ◽  
Minh N. Do

2021 ◽  
Vol 6 (3) ◽  
pp. 5589-5596
Author(s):  
Gaofeng Li ◽  
Fernando Caponetto ◽  
Edoardo Del Bianco ◽  
Vasiliki Katsageorgiou ◽  
Ioannis Sarakoglou ◽  
...  

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