# 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) ? – Mickey Shine Oct 27 '15 at 11:13
• @MickeyShine you should look at the implementation of `EucleadianLossLayer` to see how these computations can be implemented in caffe. – Shai Oct 27 '15 at 11:17
• sure, I'm gonna take a look – Mickey Shine Oct 27 '15 at 11:35
• @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 Nov 19 '15 at 6:58
• Shouldn't the first gradient be `2(a-p) - 2(a-n)` or simplified `2(n-p)`? – hbaderts Dec 6 '16 at 23:57