# What's the triplet loss back propagation gradient formula?

I am trying to use caffe to implement triplet loss described in Schroff, Kalenichenko and Philbin "FaceNet: A Unified Embedding for Face Recognition and Clustering", 2015.

I am new to this so how to calculate the gradient in back propagation?

I assume you define the loss layer as

``````layer {
name: "tripletLoss"
type: "TripletLoss"
bottom: "anchor"
bottom: "positive"
bottom: "negative"
...
}
``````

Now you need to compute a gradient w.r.t each of the "bottom"s.

The loss is given by:

The gradient w.r.t the "anchor" input (`fa`):

The gradient w.r.t the "positive" input (`fp`):

The gradient w.r.t the "negative" input (`fn`):

The original calculation (I leave here for sentimental reasons...)

Please see comment correcting the last term.

• The last one, gradient of "negative", shouldn't it be 2(fa - fn) ? Commented Oct 27, 2015 at 11:13
• @loknar the gradient is computed as a sum over `i`. This sum is over all examples in the batch. As you can see some examples contribute to the gradient (if they violate the margin) and some don't.
– Shai
Commented Nov 19, 2015 at 6:58
• Shouldn't the first gradient be `2(a-p) - 2(a-n)` or simplified `2(n-p)`? Commented Dec 6, 2016 at 23:57
• @Shai This may be a dumb question but do all three CNNs share the same weights? (So backpropagation will average the three backpropagation and update them). If not(which seems like it), which CNN do we use on test time? Commented May 16, 2017 at 7:01
• @MoneyBall (1) not a dumb question. (2) it all boils down to how you are going to deploy your net. If you are after learning an embedding to feature space and thus you have a single embedding (i.e. a single CNN) than all copies must share weights during training.
– Shai
Commented May 16, 2017 at 7:09