Modular Sci-Fi Space Base Location and Props - low poly Low-poly 3D model
Home Catalog Modular Sci-Fi Space Base Location and Props - low poly Low-poly 3D model

Publication date: 2017-03-19

Modular Sci-Fi Space Base Location and Props - low poly Low-poly 3D model

$44.9

License: Royalty Free

author:

littlechild

All content related to this 3D asset—including renders, descriptions, and metadata — is credited to its original author, «littlechild». CGhub does not claim copyright ownership over the content used.
  • Description
  • Formats

High quality modular Sci-Fi Space Base location & Props (floor tiles, platforms, generators, stands, elevator, etc..)

Package contains Unreal Engine project, Unity 3D project and Maya 2016 scene, also models exported as FBX.

(for Unity users: color masking shader optimized for standard rendering pipeline only, not HDRP/LWRP. )

This asset is optimized and hand tweaked. The textures looks amazing and super realistic, tuned for Physically-Based Rendering.

Unreal Engine project contains demo location with animated elevator. Barrels and trash cans has tuned destruction lods.

Triangles count: 44 961 tris

Asset has 11 textures sets both resolutions from 1024*1024 to 4096*4096 pixels. Most meshes has coloring masks for tuning their primary colors.

Following textures included : Diffuse, normal map, specular, illumination, roughness and metallness maps.

Pivots placed in logic places of geometry.

STL (Stereolithography, filesize: 1.72 MB), OBJ (OBJ, filesize: 4.28 MB), UASSET (UnrealEngine, filesize: 841 MB), MA (Autodesk Maya, filesize: 419 MB), MEL (Maya Mel Script, filesize: 419 MB), FBX (Autodesk FBX, filesize: 13.2 MB), TEXTURES (Textures, filesize: 415 MB), UNITYPACKAGE (Unity 3D, filesize: 267 MB)

3D Model details

  • cgtrader Platform
  • Animated
  • Rigged
  • Ready for 3D Printing
  • VR / AR / Low-poly
  • PBR
  • Textures
  • Materials
  • UV Mapping
  • Polygons: 44961
  • Vertices: 23071
  • Geometry: No N-gons | No faceted geometry | Manifold geometry |
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