# Implementing contrastive loss and triplet loss in Tensorflow

I started to play with TensorFlow two days ago and I'm wondering if there is the triplet and the contrastive losses implemented.

I've been looking at the documentation, but I haven't found any example or description about these things.

Update (2018/03/19): I wrote a blog post detailing how to implement triplet loss in TensorFlow.

You need to implement yourself the contrastive loss or the triplet loss, but once you know the pairs or triplets this is quite easy.

### Contrastive Loss

Suppose you have as input the pairs of data and their label (positive or negative, i.e. same class or different class). For instance you have images as input of size 28x28x1:

``````left = tf.placeholder(tf.float32, [None, 28, 28, 1])
right = tf.placeholder(tf.float32, [None, 28, 28, 1])
label = tf.placeholder(tf.int32, [None, 1]). # 0 if same, 1 if different
margin = 0.2

left_output = model(left)  # shape [None, 128]
right_output = model(right)  # shape [None, 128]

d = tf.reduce_sum(tf.square(left_output - right_output), 1)
d_sqrt = tf.sqrt(d)

loss = label * tf.square(tf.maximum(0., margin - d_sqrt)) + (1 - label) * d

loss = 0.5 * tf.reduce_mean(loss)
``````

### Triplet Loss

Same as with contrastive loss, but with triplets (anchor, positive, negative). You don't need labels here.

``````anchor_output = ...  # shape [None, 128]
positive_output = ...  # shape [None, 128]
negative_output = ...  # shape [None, 128]

d_pos = tf.reduce_sum(tf.square(anchor_output - positive_output), 1)
d_neg = tf.reduce_sum(tf.square(anchor_output - negative_output), 1)

loss = tf.maximum(0., margin + d_pos - d_neg)
loss = tf.reduce_mean(loss)
``````

The real trouble when implementing triplet loss or contrastive loss in TensorFlow is how to sample the triplets or pairs. I will focus on generating triplets because it is harder than generating pairs.

The easiest way is to generate them outside of the Tensorflow graph, i.e. in python and feed them to the network through the placeholders. Basically you select images 3 at a time, with the first two from the same class and the third from another class. We then perform a feedforward on these triplets, and compute the triplet loss.

The issue here is that generating triplets is complicated. We want them to be valid triplets, triplets with a positive loss (otherwise the loss is 0 and the network doesn't learn).
To know whether a triplet is good or not you need to compute its loss, so you already make one feedforward through the network...

Clearly, implementing triplet loss in Tensorflow is hard, and there are ways to make it more efficient than sampling in python but explaining them would require a whole blog post !

• Hi @Olivier, I am very interested in the sampling part. Would you or have you posted a blog for it? I am doing what just as you said, to feed forward once, and compute the losses for all possible triplets, filter out invalid ones, and sample a batch to do another forward+backward... – weitang114 Aug 2 '16 at 6:13
• Didn't write any blog post. One key insight is to compute all the possible triplets as explained in OpenFace, my answer above contains the old solution. To remove the middle `sess.run()` call, you can add a `tf.py_func` operation inside the graph to filter out the bad triplets. – Olivier Moindrot Aug 8 '16 at 21:49
• @weitang114: Another way for the 2nd part is to just compute the loss for all the triplets, removing only the invalid triplets (i.e. (+, +, +)), which can be computed in advance. This converges well, surprisingly. – Olivier Moindrot Aug 8 '16 at 21:52
• thank you for this advice. I didn't get the idea that moment, but found it very useful recently. This process implemented in tf helped me reduce a training time from 5 days to 1 day. :) – weitang114 Oct 29 '16 at 14:05
• @HelloLili: I finally wrote that blog post. Here it is: omoindrot.github.io/triplet-loss – Olivier Moindrot Mar 20 '18 at 4:41

Triplet loss with semihard negative mining is now implemented in `tf.contrib`, as follows:

``````triplet_semihard_loss(
labels,
embeddings,
margin=1.0
)
``````

where:

Args:

• labels: 1-D tf.int32 Tensor with shape [batch_size] of multiclass integer labels.

• embeddings: 2-D float Tensor of embedding vectors.Embeddings should be l2 normalized.

• margin: Float, margin term in theloss definition.

Returns:

• triplet_loss: tf.float32 scalar.

For further information, check the link bellow:

https://www.tensorflow.org/versions/master/api_docs/python/tf/contrib/losses/metric_learning/triplet_semihard_loss

Tiago, I don't think you are using the same formula Olivier gave. Here is the right code (not sure it will work though, just fixing the formula) :

``````def compute_euclidean_distance(x, y):
"""
Computes the euclidean distance between two tensorflow variables
"""

d = tf.reduce_sum(tf.square(tf.sub(x, y)),1)
return d

def compute_contrastive_loss(left_feature, right_feature, label, margin):

"""
Compute the contrastive loss as in

L = 0.5 * Y * D^2 + 0.5 * (Y-1) * {max(0, margin - D)}^2

**Parameters**
left_feature: First element of the pair
right_feature: Second element of the pair
label: Label of the pair (0 or 1)
margin: Contrastive margin

**Returns**
Return the loss operation

"""

label = tf.to_float(label)
one = tf.constant(1.0)

d = compute_euclidean_distance(left_feature, right_feature)
d_sqrt = tf.sqrt(compute_euclidean_distance(left_feature, right_feature))
first_part = tf.mul(one-label, d)# (Y-1)*(d)

max_part = tf.square(tf.maximum(margin-d_sqrt, 0))
second_part = tf.mul(label, max_part)  # (Y) * max(margin - d, 0)

loss = 0.5 * tf.reduce_mean(first_part + second_part)

return loss
``````
• Hi Wasssim, thanks for the fix, just a patch in your code. d_sqrt = tf.sqrt(compute_euclidean_distance(left_feature, right_feature)) But even with this fix, I get very low accuracy (but the loss decreases as expected). – Tiago Freitas Pereira Jul 17 '16 at 18:34
• @TiagoFreitasPereira I am having the same problem with my triplet loss implementation. I will notify you if I find a solution... – Wassim Gr Jul 17 '16 at 18:52
• Hey @Wassim, thanks. If it is easier, you can try to bootstrap my project (github.com/tiagofrepereira2012/examples.tensorflow). – Tiago Freitas Pereira Jul 18 '16 at 4:37
• @TiagoFreitasPereira , it seems like it has to do with the way we implement the accuracy computation. Looks like when using Triplet Loss or Contrastive Loss you can't compute accuracy using label verification (because the network wasn't trained to differentiate the 10 classes), however, you have to compute accuracy by evaluating whether the network guessed that two elements are from the same class or not. – Wassim Gr Jul 18 '16 at 18:21
• See section 4 and 5.6 of this paper arxiv.org/pdf/1503.03832v3.pdf – Wassim Gr Jul 19 '16 at 2:17