-Note that the image generation does not take advantage of GPUs or
-multi-core, and can be as fast as 3,000 vignettes per second and as
-slow as 40 on a 4GHz i7-6700K.
+This compression reduces the memory footprint by a factor ~50, and may
+be usefull to deal with very large data-sets and avoid re-generating
+images at every batch. It induces a little overhead for decompression,
+and moving from CPU to GPU memory.
+
+See vignette_set.py for a class CompressedVignetteSet using it.
+
+# Testing convolution networks #
+
+The file
+
+```
+cnn-svrt.py
+```
+
+provides the implementation of two deep networks, and use the
+compressed vignette code to allow the training with several millions
+vignettes on a PC with 16Gb and a GPU with 8Gb.
+
+The networks were designed by Afroze Baqapuri during an internship at
+Idiap.