【发布时间】:2020-08-07 00:27:46
【问题描述】:
在代码下方,我使用了检测图像中的眩光点。我执行了一系列腐蚀和膨胀来去除阈值并执行连通分量分析。如何使用 openc-python 删除它们?
path = "desire image path"
image = cv2.imread(path)
gray = cv2.cvtColor( image, cv2.COLOR_BGR2GRAY )
blurred = cv2.GaussianBlur( gray, (11, 11), 0 )
# threshold the image to reveal light regions in the
# blurred image
thresh = cv2.threshold( blurred, 200, 255, cv2.THRESH_BINARY )[1]
# perform a series of erosions and dilations to remove
# any small blobs of noise from the thresholded image
thresh = cv2.erode( thresh, None, iterations=2 )
thresh = cv2.dilate( thresh, None, iterations=4 )
# perform a connected component analysis on the thresholded
# image, then initialize a mask to store only the "large"
# components
labels = measure.label( thresh, neighbors=8, background=0 )
mask = np.zeros( thresh.shape, dtype="uint8" )
# loop over the unique components
for label in np.unique( labels ):
# if this is the background label, ignore it
if label == 0:
continue
# otherwise, construct the label mask and count the
# number of pixels
labelMask = np.zeros( thresh.shape, dtype="uint8" )
labelMask[labels == label] = 255
numPixels = cv2.countNonZero( labelMask )
# if the number of pixels in the component is sufficiently
# large, then add it to our mask of "large blobs"
if numPixels > 300:
mask = cv2.add( mask, labelMask )
# find the contours in the mask, then sort them from left to
# right
cnts = cv2.findContours( mask.copy(), cv2.RETR_EXTERNAL,
cv2.CHAIN_APPROX_SIMPLE )
cnts = imutils.grab_contours( cnts )
cnts = contours.sort_contours( cnts )[0]
# loop over the contours
for (i, c) in enumerate( cnts ):
# draw the bright spot on the image
(x, y, w, h) = cv2.boundingRect( c )
((cX, cY), radius) = cv2.minEnclosingCircle( c )
cv2.circle( image, (int( cX ), int( cY )), int( radius ),
(0, 0, 255), 3 )
cv2.putText( image, "#{}".format( i + 1 ), (x, y - 15), cv2.FONT_HERSHEY_SIMPLEX, 0.45, (0, 0, 255), 2 )
# image = remove_glare( image, x, y )
# show the output image
cv2.imshow( "Image", image )
cv2.imwrite("spots_detected.jpg",image)
cv2.waitKey( 0 )
【问题讨论】:
-
你不能“删除”它们,因为你会用什么来替换它们? 2D 光栅图像不包含光场信息——你可以做的最好的事情是尝试构建类似 Photoshop 的内容感知填充或修复工具,但这需要 Adobe 数年时间和数百万美元来开发(结果通常是 错无论如何)-这种图像处理工作并非微不足道。
-
Take the photo again。严重的眩光无法消除。一旦颜色变为纯白色,您将无法恢复颜色。您可以尝试将眩光点转换为蒙版图像,然后将其与 cv2.inpaint() 一起使用以恢复一些纹理。 -
@fmw42 “您可以尝试将眩光点转换为蒙版图像,然后将其与 cv2.inpaint() 一起使用以恢复一些纹理”您能否解释清楚,因为我是 opencv 的新手,并且你也可以提供一些对我有帮助的代码示例
标签: python-3.x image-processing opencv-python