tfnn commited on
Commit
82f6e2b
1 Parent(s): 172f367

Update README.md

Browse files
Files changed (1) hide show
  1. README.md +3 -2
README.md CHANGED
@@ -90,7 +90,8 @@ The basic premise of how this network is trained and thus how the dataset is gen
90
  4. The icosphere vertex index is scaled to a 0-1 range before being input to the network.
91
  5. The network only has two input parameters, the other parameter is a 0-1 model ID which is randomly selected and all vertices for a specific model are trained into the network using the randomly selected ID. This ID does not change per-vertex it only changes per 3D model.
92
  6. The ID allows the user to use this parameter as a sort of hyper-parameter for the random seed: to generate a random Head using this network you would input a random 0-1 seed and then iterate the icosphere index parameter to some sample range between 0-1 so if you wanted a 20,000 vertex head you would iterate between 0-1 at 20,000 increments of 0.00005 as the network outputs one vertex position and vertex color for each forward-pass.
93
- 7. 1st input parameter = random seed
94
- 8. 2nd input parameter = icosphere index
 
95
 
96
  More about this network topology can be read here: https://gist.github.com/mrbid/1eacdd9d9239b2d324a3fa88591ff852
 
90
  4. The icosphere vertex index is scaled to a 0-1 range before being input to the network.
91
  5. The network only has two input parameters, the other parameter is a 0-1 model ID which is randomly selected and all vertices for a specific model are trained into the network using the randomly selected ID. This ID does not change per-vertex it only changes per 3D model.
92
  6. The ID allows the user to use this parameter as a sort of hyper-parameter for the random seed: to generate a random Head using this network you would input a random 0-1 seed and then iterate the icosphere index parameter to some sample range between 0-1 so if you wanted a 20,000 vertex head you would iterate between 0-1 at 20,000 increments of 0.00005 as the network outputs one vertex position and vertex color for each forward-pass.
93
+
94
+ * 1st input parameter = random seed
95
+ * 2nd input parameter = icosphere index
96
 
97
  More about this network topology can be read here: https://gist.github.com/mrbid/1eacdd9d9239b2d324a3fa88591ff852