# Crop a Bounding Box from an Image which is a Numpy Array

So I have an Image which is of shape (224,244,3) as an ndarray. I have a bounding box annotation for the image that looks like this

``````{
annotations: [
{
class: "rect",
height: 172,
width: 341,
x: 282,
y: 165
},
{
class: "rect",
height: 172,
width: 353,
x: 592,
y: 90
}
],
class: "image",
filename: "img_05974.jpg"
}
``````

How do I crop the numpy array so that it gives me an image like the above bounding rectangles ?

• `width: 341` is larger than the image shape (`224`). It's therefore pretty unclear what you are trying to achieve. Also, what should be the role of `x` and `y` in the cropping? Jan 28, 2017 at 11:51

In principle cropping is easily done simply by slicing the correct part out of the array. E.g. `image[100:200, 50:100, :]` slices the part between pixels 100 and 200 in y (vertical) direction, and the part between pixels 50 and 100 in x (horizontal) direction.

See this working example:

``````import matplotlib.pyplot as plt

mydic = {
"annotations": [
{
"class": "rect",
"height": 98,
"width": 113,
"x": 177,
"y": 12
},
{
"class": "rect",
"height": 80,
"width": 87,
"x": 373,
"y": 43
}
],
"class": "image",
"filename": "https://i.stack.imgur.com/9qe6z.png"
}

def crop(dic, i):
x0 = dic["annotations"][i]["x"]
y0 = dic["annotations"][i]["y"]
width = dic["annotations"][i]["width"]
height = dic["annotations"][i]["height"]
return image[y0:y0+height , x0:x0+width, :]

fig = plt.figure()