I have this code to understand how Jaccard Index works and I am trying to implement it as a Keras custom metric, but the return of this function is wrong and I have no idea why (I am new to Keras btw).

This function creates a rectangular area to test intersections:

```
def block(start, width=20, heigth=10, length=60):
block = np.zeros((1, heigth, length))
block[:, :, start:(start + width)] = 1
return block.astype('uint8')
```

If I get a `block(10)`

and a `block(20)`

there should be two 10x20 blocks with a 10x10 area of intersection so the union must be `2*(10*20) - 10*10`

which is confirmed by this Numpy line:

```
np.sum(((block(10) + block(20)) > 0).astype('uint8'))
```

But when I try to use this Keras function:

```
def test(a, b):
return K.sum(K.cast((a + b) > 0, dtype='uint8'))
```

The result is 44 when I call it with `K.eval(test(block(10), block(20)))`

EDIT (new test):

```
def test(a, b):
return K.sum(a), K.sum(b), K.sum(a) + K.sum(b)
[K.eval(elem) for elem in test(block(10), block(20))]
```

This is the result: `[200, 200, 144]`

What am I doing wrong to get this result?