Understanding Implicit Neural Representations with Itzik Ben-Shabat

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  • Опубліковано 18 гру 2024

КОМЕНТАРІ • 3

  • @vaidyt
    @vaidyt 2 місяці тому +1

    To understand a Signed Distance Function (SDF), imagine a circle with radius R and center at [0,0]. The equation of its boundary is x^2+y^2=R^2. Rearrange it to x^2+y^2−R^2=0. This represents the SDF, where f(x,y)=0 defines the boundary. The function f(x,y)0 represents points outside. Essentially, the SDF indicates how far a point is from the boundary, with the sign showing whether it's inside or outside. You can also write a similar equation for a sphere, but SDF algorithms allow you to do this for any arbitrary geometry.

    • @quonxinquonyi8570
      @quonxinquonyi8570 Місяць тому

      So how it captures geometry,let say 3d geometry with the help of neural network, as we know neural network is just a function approximation which helps in learning the equation of level/ scalar curves….I am still not clear with how it captures 3d geometry from 3d point given as input to neural network

  • @kamyarothman8157
    @kamyarothman8157 5 місяців тому

    good one