Photo
1000drawings:
“by Troche
”
Photo
Text

autisticdougramsey:

i saw goody proctor cracking open a cold one with the devil

(Source: selfsoulfriend, via decrescendo-for-wat)

Photoset

sashayed:

the-real-eye-to-see:

There is nothing this man can’t do!

Did u guys know that Terry Crews – who grew up in Flint, Mich., and earned an arts scholarship to Interlochen before his full ride as a college football player  – just launched a contemporary furniture line?

image
image

Terry loves clean silhouettes and trying new stuff.

(via yellow-moonshadow21)

Photo
Text

that-kawoshin-evageek:

an uncrackable cold one meets unstoppable boys

(Source: nomokonov, via piratepeach)

Photo

(via primatez)

Chat
  • stuffed animal: *has fur covering its eyes*
  • me: *gently fixes it*
  • me: you can See
Photoset
Photo

(via primatez)

Video
Photo
Text

lizardsister:

phil collins didn’t have to go so hard on the tarzan soundtrack but he did that…… he did that for all of us

(via piratepeach)

Photoset

moonbrains:

sstyles:

Harry Styles, photographed by Harley Weir.

honestly this is what i survived this winter for

(via snatch-comix)

Text

New paint colors invented by neural network

norondor:

gehinnom:

lark-in-ink:

lewisandquark:

So if you’ve ever picked out paint, you know that every infinitesimally different shade of blue, beige, and gray has its own descriptive, attractive name. Tuscan sunrise, blushing pear, Tradewind, etc… There are in fact people who invent these names for a living. But given that the human eye can see millions of distinct colors, sooner or later we’re going to run out of good names. Can AI help?

For this experiment, I gave the neural network a list of about 7,700 Sherwin-Williams paint colors along with their RGB values. (RGB = red, green, and blue color values) Could the neural network learn to invent new paint colors and give them attractive names?

One way I have of checking on the neural network’s progress during training is to ask it to produce some output using the lowest-creativity setting. Then the neural network plays it safe, and we can get an idea of what it has learned for sure.

By the first checkpoint, the neural network has learned to produce valid RGB values - these are colors, all right, and you could technically paint your walls with them. It’s a little farther behind the curve on the names, although it does seem to be attempting a combination of the colors brown, blue, and gray.

image

By the second checkpoint, the neural network can properly spell green and gray. It doesn’t seem to actually know what color they are, however.

image

Let’s check in with what the more-creative setting is producing.

image

…oh, okay.

Later in the training process, the neural network is about as well-trained as it’s going to be (perhaps with different parameters, it could have done a bit better - a lot of neural network training involves choosing the right training parameters). By this point, it’s able to figure out some of the basic colors, like white, red, and grey:

image

Although not reliably.

image

In fact, looking at the neural network’s output as a whole, it is evident that:

  1. The neural network really likes brown, beige, and grey.
  2. The neural network has really really bad ideas for paint names.
image

Tag yourself I’m Grade Bat

I’m dorkwood

i’m dondarf

(via aimchatroom)