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3D shape retrieval using uncertain semantic query: a preliminary study

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Academic year: 2021

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Figure

Figure 1: Overview - we propose a process to go from a semantic request to a suitable 3D-shape that can be used in a retrieval machine in order to retrive 3D-shapes matching the semantic request
Figure 2: Examples of designed chairs
Figure 4: Examples of high chair, low chair and Stand Hum.
Figure 7: Examples of first three low chairs selected (ranked from left to right)
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