How to compute 2D convolutions when the input image has multiple channels

in #deeplearning7 years ago

All the numerical examples of convolutions that I have seen thus far always assume that the input image has only 1 channel (for example, see this post on stack overflow). This made me wonder how the computations would work when the input image has multiple channels. I created a Sage worksheet to trace how the computations would work. You can get the code I wrote from my blog here.

Sort:  

Congratulations @majnun! You received a personal award!

Happy Birthday! - You are on the Steem blockchain for 2 years!

You can view your badges on your Steem Board and compare to others on the Steem Ranking

Do not miss the last post from @steemitboard:

The Steem community has lost an epic member! Farewell @woflhart!
SteemitBoard - Witness Update
Do not miss the coming Rocky Mountain Steem Meetup and get a new community badge!
Vote for @Steemitboard as a witness to get one more award and increased upvotes!

Coin Marketplace

STEEM 0.21
TRX 0.20
JST 0.035
BTC 91503.26
ETH 3168.76
USDT 1.00
SBD 3.06