# how to get diameter of a object in a image?

I have build a basic object detection using scikit-image processing tool and I've provided an example below with an example image. I've also provided the example output below.

I want to find the diameter of the objects detected? Can any one explain how can I achieve this?

I found there are multiple attributes available for `regionprop` function in `scikit-image` but I couldn't figure out how to find diameter of the object?

I am doing this on another real image but I've using almost similar code and was wondering if someone could help me out here. Thanks a lot.

Note: I've found this tutorial in the documentation regarding measuring region properties from this `link` but I was not able to understand on how to use this to get diameter of the objected detected.

``````import matplotlib.pyplot as plt
import matplotlib.patches as mpatches

from skimage import data
from skimage.filters import threshold_otsu
from skimage.segmentation import clear_border
from skimage.measure import label, regionprops
from skimage.morphology import closing, square
from skimage.color import label2rgb

image = data.coins()[50:-50, 50:-50]

# apply threshold
thresh = threshold_otsu(image)
bw = closing(image > thresh, square(3))

# remove artifacts connected to image border
cleared = clear_border(bw)

# label image regions
label_image = label(cleared)
image_label_overlay = label2rgb(label_image, image=image)

fig, ax = plt.subplots(figsize=(10, 6))
ax.imshow(image_label_overlay)

for region in regionprops(label_image):
# take regions with large enough areas
if region.area >= 100:
# draw rectangle around segmented coins
minr, minc, maxr, maxc = region.bbox
rect = mpatches.Rectangle((minc, minr), maxc - minc, maxr - minr,
fill=False, edgecolor='red', linewidth=2)

ax.set_axis_off()
plt.tight_layout()
plt.show()
``````

This code returns this,

`OUTPUT`

• You might find this blog post interesting: crisluengo.net/archives/408 -- It shows MATLAB code, but you should be able to translate that to Python quite easily. The method is implemented in Python in the DIPlib project. – Cris Luengo Oct 18 at 20:11
• Also, `regionprops` returns `equivalent_diameter`, which is not exactly the diameter but would be a good approximation for your almost-circular objects. – Cris Luengo Oct 18 at 20:13
• @CrisLuengo This is the output image of my original ouput image --> `TMT Rod`. These rods are 9-13mm in diameter and I want to calculate it's diameter. And `equivalent_diameter` is returning a value which is not making much sense. Is it possible to convert it to `mm` representation? – Balachandar Oct 18 at 20:33
• That's a very different image from what you posted in your question. Here the diameter of the rods should be obtained from the width of the box. The `equivalent_diameter` will not be meaningful (it is the diameter of the disk with the same area as your object). All measures are, I assume, returned in pixels. You need to know the number of mm per pixel, and multiply your measurement in pixels with that value. – Cris Luengo Oct 18 at 20:41
• Look at this trick here: youtu.be/XXaVwItbPcY?t=16 -- Did it fool you? That proves the point that you cannot tell how large something is in an image. – Cris Luengo Oct 18 at 21:23