A slice-traversal algorithm for very large mapped volumetric models

2021 ◽  
pp. 103102
Author(s):  
Jeremy Youngquist ◽  
Meera Sitharam ◽  
Jörg Peters
2021 ◽  
pp. 150-157
Author(s):  
Galina Kozlova ◽  
Lyudmila Kozlova

The article presents the design and research work of the authors and first-year architecture students of Irkutsk National Research Technical University concerning compositional study of lost temples of Irkutsk with the reconstruction of their architectural appearance. The illustrative material was prepared using the students’ works. The complex of Siberian Baroque temples in Irkutsk in the mid-18th – late 19th centuries and various types of church buildings were studied. The work uses modeling as a tool for predicting the architectural appearance of the temple. Sketch drawings and models of the Miracle-Working, Tikhvinsky and Annunciation temples were completed, and the model of the evolution of Siberian Baroque temples was recreated. The main stages of the term project, from building functional, planning and volumetric models to designing image and structural characteristics of the object on the sample board, were presented.


2017 ◽  
Author(s):  
Marwan Abdellah ◽  
Juan Hernando ◽  
Nicolas Antille ◽  
Stefan Eilemann ◽  
Henry Markram ◽  
...  

AbstractBackground We present a software workflow capable of building large scale, highly detailed and realistic volumetric models of neocortical circuits from the morphological skeletons of their digitally reconstructed neurons. The limitations of the existing approaches for creating those models are explained, and then, a multi-stage pipeline is discussed to overcome those limitations. Starting from the neuronal morphologies, we create smooth piecewise watertight polygonal models that can be efficiently utilized to synthesize continuous and plausible volumetric models of the neurons with solid voxelization. The somata of the neurons are reconstructed on a physically-plausible basis relying on the physics engine in Blender.Results Our pipeline is applied to create 55 exemplar neurons representing the various morphological types that are reconstructed from the somatsensory cortex of a juvenile rat. The pipeline is then used to reconstruct a volumetric slice of a cortical circuit model that contains ∼210,000 neurons. The applicability of our pipeline to create highly realistic volumetric models of neocortical circuits is demonstrated with an in silico imaging experiment that simulates tissue visualization with brightfield microscopy. The results were evaluated with a group of domain experts to address their demands and also to extend the workflow based on their feedback.Conclusion A systematic workflow is presented to create large scale synthetic tissue models of the neocortical circuitry. This workflow is fundamental to enlarge the scale of in silico neuroscientific optical experiments from several tens of cubic micrometers to a few cubic millimeters.


2012 ◽  
Vol 2012 ◽  
pp. 1-10
Author(s):  
Aliaksandr Alevanau ◽  
Pawel Donaj ◽  
Weihong Yang ◽  
Wlodzimierz Blasiak

Experimental research on the pyrolysis and gasification of randomly packed straw pellets was conducted with an emphasis on the reactive properties of the shrinking porous structure of the pellets. The apparent kinetics of such pyrolysis was approximated by the random pore, grain, and volumetric models. The best approximation results were obtained with the grain and random pore models. The self-organized oscillations of the pellet conversion rate during pyrolysis were observed. Two complementary explanations of the phenomenon are proposed.


Author(s):  
Sebastian Thrun ◽  
Wolfram Burgard ◽  
Deepayan Chakrabarti ◽  
Rosemary Emery ◽  
Yufeng Liu ◽  
...  

2019 ◽  
Vol 126 ◽  
pp. 359-368 ◽  
Author(s):  
Roberto Rodriguez Rubio ◽  
Joseph Shehata ◽  
Ioannis Kournoutas ◽  
Ricky Chae ◽  
Vera Vigo ◽  
...  

2019 ◽  
Vol 129 ◽  
pp. 372-377 ◽  
Author(s):  
Ioannis Kournoutas ◽  
Vera Vigo ◽  
Ricky Chae ◽  
Minghao Wang ◽  
Jose Gurrola ◽  
...  

Author(s):  
Samuel M Nicholls ◽  
Wayne Aubrey ◽  
Kurt De Grave ◽  
Leander Schietgat ◽  
Christopher J Creevey ◽  
...  

Abstract Motivation Population-level genetic variation enables competitiveness and niche specialization in microbial communities. Despite the difficulty in culturing many microbes from an environment, we can still study these communities by isolating and sequencing DNA directly from an environment (metagenomics). Recovering the genomic sequences of all isoforms of a given gene across all organisms in a metagenomic sample would aid evolutionary and ecological insights into microbial ecosystems with potential benefits for medicine and biotechnology. A significant obstacle to this goal arises from the lack of a computationally tractable solution that can recover these sequences from sequenced read fragments. This poses a problem analogous to reconstructing the two sequences that make up the genome of a diploid organism (i.e. haplotypes), but for an unknown number of individuals and haplotypes. Results The problem of single individual haplotyping (SIH) was first formalised by Lancia et al. in 2001. Now, nearly two decades later, we discuss the complexity of “haplotyping” metagenomic samples, with a new formalisation of Lancia et al’s data structure that allows us to effectively extend the single individual haplotype problem to microbial communities. This work describes and formalizes the problem of recovering genes (and other genomic subsequences) from all individuals within a complex community sample, which we term the metagenomic individual haplotyping (MIH) problem. We also provide software implementations for a pairwise single nucleotide variant (SNV) co-occurrence matrix and greedy graph traversal algorithm. Availability and implementation Our reference implementation of the described pairwise SNV matrix (Hansel) and greedy haplotype path traversal algorithm (Gretel) are open source, MIT licensed and freely available online at github.com/samstudio8/hansel and github.com/samstudio8/gretel, respectively.


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