X-Git-Url: https://fleuret.org/cgi-bin/gitweb/gitweb.cgi?p=dyncnn.git;a=blobdiff_plain;f=README.txt;h=18526634022928cbb6dec35a85a5028badd92588;hp=85cf8ba1e9373a3d595dd1106b4c9021731240f2;hb=5cbea5ca8a26719be70c974fab505e5b8695d9e4;hpb=a79fda5dc501909019e40b185760be3fbaa4d12d diff --git a/README.txt b/README.txt index 85cf8ba..1852663 100644 --- a/README.txt +++ b/README.txt @@ -5,7 +5,7 @@ the dynamics of 2D shapes as described in F. Fleuret. Predicting the dynamics of 2d objects with a deep residual network. CoRR, abs/1610.04032, 2016. - https://arxiv.org/pdf/1610.04032v1 + https://arxiv.org/abs/1610.04032 This package is composed of a simple 2d physics simulator called 'flatland' written in C++, to generate the data-set, and a deep @@ -16,16 +16,17 @@ script. It will - (1) generate the data-set of 50k triplets of images, + (1) Generate the data-set of 40k triplets of images, - (2) train the deep network, and output validation results every 100 - epochs. This take ~30h on a GTX 1080. + (2) Train the deep network, and output validation results every 100 + epochs. This takes ~30h on a GTX 1080 with cuda 8.0, cudnn 5.1, + and recent torch. - (3) generate two pictures of the internal activations. + (3) Generate two pictures of the internal activations. - (4) generate a graph with the loss curves if gnuplot is installed. + (4) Generate a graph with the loss curves if gnuplot is installed. -- Francois Fleuret -Oct 21, 2016 +Nov 24, 2016 Martigny