64

I have a list say, temp_list with following properties :

len(temp_list) = 9260  
temp_list[0].shape = (224,224,3)  

Now, when I am converting into numpy array,

x = np.array(temp_list)  

I am getting the error :

ValueError: could not broadcast input array from shape (224,224,3) into shape (224,224)  

Can someone help me here?

  • 2
    i guess we need to use np.flatten() – Aditya May 15 '17 at 10:45
  • 1
    flatten will distort the shape of the array. – neel May 15 '17 at 10:46
  • 1
    What shape do you want it to be in? You're trying to create a new array out of a list of 3D arrays, so the final array could be 3 or 4D. You may get somewhere with np.dstack (or np.hstack or np.vstack). – user707650 May 15 '17 at 10:48
  • I checked already, all elements are 3D having shape (224,224,3) – neel May 15 '17 at 10:51
  • Could you tell us the output of sum([item.size for item in temp_list])? – user707650 May 15 '17 at 10:57
68

At least one item in your list is either not three dimensional, or its second or third dimension does not match the other elements. If only the first dimension does not match, the arrays are still matched, but as individual objects, no attempt is made to reconcile them into a new (four dimensional) array. Some examples are below:

That is, the offending element's shape != (?, 224, 3),
or ndim != 3 (with the ? being non-negative integer).
That is what is giving you the error.

You'll need to fix that, to be able to turn your list into a four (or three) dimensional array. Without context, it is impossible to say if you want to lose a dimension from the 3D items or add one to the 2D items (in the first case), or change the second or third dimension (in the second case).


Here's an example of the error:

>>> a = [np.zeros((224,224,3)), np.zeros((224,224,3)), np.zeros((224,224))]
>>> np.array(a)
ValueError: could not broadcast input array from shape (224,224,3) into shape (224,224)

or, different type of input, but the same error:

>>> a = [np.zeros((224,224,3)), np.zeros((224,224,3)), np.zeros((224,224,13))]
>>> np.array(a)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
ValueError: could not broadcast input array from shape (224,224,3) into shape (224,224)

Alternatively, similar but with a different error message:

>>> a = [np.zeros((224,224,3)), np.zeros((224,224,3)), np.zeros((224,100,3))]
>>> np.array(a)
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
ValueError: could not broadcast input array from shape (224,224,3) into shape (224)

But the following will work, albeit with different results than (presumably) intended:

>>> a = [np.zeros((224,224,3)), np.zeros((224,224,3)), np.zeros((10,224,3))]
>>> np.array(a)
# long output omitted
>>> newa = np.array(a)
>>> newa.shape
3  # oops
>>> newa.dtype
dtype('O')
>>> newa[0].shape
(224, 224, 3)
>>> newa[1].shape
(224, 224, 3)
>>> newa[2].shape
(10, 224, 3)
>>> 
| improve this answer | |
  • Okay so this answers what's causing the error but how to resolve it. I'm having the same issue but in my case I'm directly converting a raw-image to np.array using img_to_array(), tensorflow. Hence I don't have the privileged to convert it to .astype(object) as mentioned by @YinJie Gao below. T.I.A. – Shashank Shukla Jun 19 at 7:01
9

Yea, Indeed @Evert answer is perfectly correct. In addition I'll like to add one more reason that could encounter such error.

>>> np.array([np.zeros((20,200)),np.zeros((20,200)),np.zeros((20,200))])

This will be perfectly fine, However, This leads to error:

>>> np.array([np.zeros((20,200)),np.zeros((20,200)),np.zeros((20,201))])

ValueError: could not broadcast input array from shape (20,200) into shape (20)

The numpy arry within the list, must also be the same size.

| improve this answer | |
  • 1
    Thanks for this additional information. My problem is the exactly as you mentioned, the inner ndarrays' shape is different. – Aaron Shen Apr 11 '18 at 9:31
  • 2
    Thanks for that addition, I stumbled over this exact issue. The funny thing is if you switch around the 20 and 200/201 in the second case, it works, which I find quite confusing. Numpy will not create a 3D array in that case but instead a 1D array containing 2D arrays. So totally different behaviour from a seemingly innocent change. A bit frustrating to be honest. – Cerno Aug 14 '18 at 17:48
5

You can covert numpy.ndarray to object using astype(object)

This will work:

>>> a = [np.zeros((224,224,3)).astype(object), np.zeros((224,224,3)).astype(object), np.zeros((224,224,13)).astype(object)]
| improve this answer | |
1

@aravk33 's answer is absolutely correct.

I was going through the same problem. I had a data set of 2450 images. I just could not figure out why I was facing this issue.

Check the dimensions of all the images in your training data.

Add the following snippet while appending your image into your list:

if image.shape==(1,512,512):
    trainx.append(image)
| improve this answer | |

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