# How to get the coordinates of the bounding box in YOLO object detection? I need to get the bounding box coordinates generated in the above image using YOLO object detection.

A quick solution is to modify the image.c file to print out the bounding box information:

``````...
if(bot > im.h-1) bot = im.h-1;

// Print bounding box values
printf("Bounding Box: Left=%d, Top=%d, Right=%d, Bottom=%d\n", left, top, right, bot);
draw_box_width(im, left, top, right, bot, width, red, green, blue);
...
``````
• Seriously, thank you so much for suggesting image.c. It helped me solve a totally different problem: When running YOLO in Python (via OpenCV-DNN), the detections are given in a float format. And literally every article I've ever seen has the WRONG MATH for turning the YOLO floats (center X/Y, and width/height) into pixel coordinates. But the official image.c has the math! Right here! github.com/pjreddie/darknet/blob/… - I just had to port that to python. :-) – Mitch McMabers Sep 10 '19 at 19:04

There is a nice little python (2 - but with small modifications 3. [ just change the print and strings to binary strings in the main ] ) program you can use in the main repo https://github.com/pjreddie/darknet/blob/master/python/darknet.py

NOTE! The given coordinates are midpoint and width and height.

If you are going to implement this in `python`, there is this small `python` wrapper that I have created in here. Follow the `ReadMe` file and install it. It will be very easy to install.

After that follow this example code to know how to detect objects.
If your detection is `det`

``````top_left_x = det.bbox.x
top_left_y = det.bbox.y
width = det.bbox.w
height = det.bbox.h
``````

If you need, you can get the midpoint by:

``````mid_x, mid_y = det.bbox.get_point(pyyolo.BBox.Location.MID)
``````

Hope this helps..

for python user in windows:

first..., do several setting jobs:

1. setting python path of your darknet folder in environtment path:

`PYTHONPATH = 'YOUR DARKNET FOLDER'`

`%PYTHONPATH%`

3. edit file `coco.data` in `cfg folder`, by change the `names` folder variable to your `coco.names` folder, in my case:

`names = D:/core/darknetAB/data/coco.names`

with this setting, you can call darknet.py (from alexeyAB\darknet repository) as your python module from any folder.

start scripting:

``````from darknet import performDetect as scan #calling 'performDetect' function from darknet.py

def detect(str):
''' this script if you want only want get the coord '''
picpath = str
cfg='D:/core/darknetAB/cfg/yolov3.cfg' #change this if you want use different config
coco='D:/core/darknetAB/cfg/coco.data' #you can change this too
data='D:/core/darknetAB/yolov3.weights' #and this, can be change by you
test = scan(imagePath=picpath, thresh=0.25, configPath=cfg, weightPath=data, metaPath=coco, showImage=False, makeImageOnly=False, initOnly=False) #default format, i prefer only call the result not to produce image to get more performance

#until here you will get some data in default mode from alexeyAB, as explain in module.
#try to: help(scan), explain about the result format of process is: [(item_name, convidence_rate (x_center_image, y_center_image, width_size_box, height_size_of_box))],
#to change it with generally used form, like PIL/opencv, do like this below (still in detect function that we create):

newdata = []
if len(test) >=2:
for x in test:
item, confidence_rate, imagedata = x
x1, y1, w_size, h_size = imagedata
x_start = round(x1 - (weight_size/2))
y_start = round(y1 - (height_size/2))
x_end = round(x_start + w_size)
y_end = round(y_start + h_size)
data = (item, confidence_rate, (x_start, y_start, x_end, y_end), w_size, h_size)
newdata.append(data)

elif len(test) == 1:
item, confidence_rate, imagedata = test
x1, y1, w_size, h_size = imagedata
x_start = round(x1 - (w_size/2))
y_start = round(y1 - (h_size/2))
x_end = round(x_start + w_size)
y_end = round(y_start + h_size)
data = (item, confidence_rate, (x_start, y_start, x_end, y_end), w_size, h_size)
newdata.append(data)

else:
newdata = False

return newdata
``````

How to use it:

``````table = 'D:/test/image/test1.jpg'
checking = detect(table)'
``````

to get the coordinate:

if only 1 result:

`x1, y1, x2, y2 = checking`

if many result:

``````for x in checking:
item = x
x1, y1, x2, y2 = x
print(item)
print(x1, y1, x2, y2)
``````