Averaging pixels in image ROI





.everyoneloves__top-leaderboard:empty,.everyoneloves__mid-leaderboard:empty,.everyoneloves__bot-mid-leaderboard:empty{ height:90px;width:728px;box-sizing:border-box;
}







0















I have the following image and I would like to apply averaging on each masked region (not the bounding box) in the image.



enter image description here



As you can see, right now, the regions have changing values inside them on the heat map. Some pixels are yellowish, some are purplish. I want this to be not the case inside the masks.



So what I need to do is (I guess):




  • to find which coordinates correspond to the masks

  • average the pixels within these coordinates


Here is how the masks are found:



file_names = glob(os.path.join(IMAGE_DIR, "*.jpg"))
masks_prediction = np.zeros((521, 768, len(file_names)))
for i in range(len(file_names)):
print(i)
image = skimage.io.imread(file_names[i])
predictions = model.detect([image], verbose=1)
p = predictions[0]
masks = p['masks']
merged_mask = np.zeros((masks.shape[0], masks.shape[1]))
for j in range(masks.shape[2]):
merged_mask[masks[:,:,j]==True] = True
masks_prediction[:,:,i] = merged_mask


Here is the function which applies the masks:



def apply_mask(image, mask, color, alpha=0.5):
"""Apply the given mask to the image.
"""
for c in range(3):
image[:, :, c] = np.where(mask == 1,
image[:, :, c] *
(1 - alpha) + alpha * color[c] * 255,
image[:, :, c])
return image


and in the main file, here is how it is used:



mask = masks[:, :, i]
if show_mask:
masked_image = apply_mask(masked_image, mask, color)


So I need to make a modification in somewhere here but I don't know where exactly.










share|improve this question





























    0















    I have the following image and I would like to apply averaging on each masked region (not the bounding box) in the image.



    enter image description here



    As you can see, right now, the regions have changing values inside them on the heat map. Some pixels are yellowish, some are purplish. I want this to be not the case inside the masks.



    So what I need to do is (I guess):




    • to find which coordinates correspond to the masks

    • average the pixels within these coordinates


    Here is how the masks are found:



    file_names = glob(os.path.join(IMAGE_DIR, "*.jpg"))
    masks_prediction = np.zeros((521, 768, len(file_names)))
    for i in range(len(file_names)):
    print(i)
    image = skimage.io.imread(file_names[i])
    predictions = model.detect([image], verbose=1)
    p = predictions[0]
    masks = p['masks']
    merged_mask = np.zeros((masks.shape[0], masks.shape[1]))
    for j in range(masks.shape[2]):
    merged_mask[masks[:,:,j]==True] = True
    masks_prediction[:,:,i] = merged_mask


    Here is the function which applies the masks:



    def apply_mask(image, mask, color, alpha=0.5):
    """Apply the given mask to the image.
    """
    for c in range(3):
    image[:, :, c] = np.where(mask == 1,
    image[:, :, c] *
    (1 - alpha) + alpha * color[c] * 255,
    image[:, :, c])
    return image


    and in the main file, here is how it is used:



    mask = masks[:, :, i]
    if show_mask:
    masked_image = apply_mask(masked_image, mask, color)


    So I need to make a modification in somewhere here but I don't know where exactly.










    share|improve this question

























      0












      0








      0








      I have the following image and I would like to apply averaging on each masked region (not the bounding box) in the image.



      enter image description here



      As you can see, right now, the regions have changing values inside them on the heat map. Some pixels are yellowish, some are purplish. I want this to be not the case inside the masks.



      So what I need to do is (I guess):




      • to find which coordinates correspond to the masks

      • average the pixels within these coordinates


      Here is how the masks are found:



      file_names = glob(os.path.join(IMAGE_DIR, "*.jpg"))
      masks_prediction = np.zeros((521, 768, len(file_names)))
      for i in range(len(file_names)):
      print(i)
      image = skimage.io.imread(file_names[i])
      predictions = model.detect([image], verbose=1)
      p = predictions[0]
      masks = p['masks']
      merged_mask = np.zeros((masks.shape[0], masks.shape[1]))
      for j in range(masks.shape[2]):
      merged_mask[masks[:,:,j]==True] = True
      masks_prediction[:,:,i] = merged_mask


      Here is the function which applies the masks:



      def apply_mask(image, mask, color, alpha=0.5):
      """Apply the given mask to the image.
      """
      for c in range(3):
      image[:, :, c] = np.where(mask == 1,
      image[:, :, c] *
      (1 - alpha) + alpha * color[c] * 255,
      image[:, :, c])
      return image


      and in the main file, here is how it is used:



      mask = masks[:, :, i]
      if show_mask:
      masked_image = apply_mask(masked_image, mask, color)


      So I need to make a modification in somewhere here but I don't know where exactly.










      share|improve this question














      I have the following image and I would like to apply averaging on each masked region (not the bounding box) in the image.



      enter image description here



      As you can see, right now, the regions have changing values inside them on the heat map. Some pixels are yellowish, some are purplish. I want this to be not the case inside the masks.



      So what I need to do is (I guess):




      • to find which coordinates correspond to the masks

      • average the pixels within these coordinates


      Here is how the masks are found:



      file_names = glob(os.path.join(IMAGE_DIR, "*.jpg"))
      masks_prediction = np.zeros((521, 768, len(file_names)))
      for i in range(len(file_names)):
      print(i)
      image = skimage.io.imread(file_names[i])
      predictions = model.detect([image], verbose=1)
      p = predictions[0]
      masks = p['masks']
      merged_mask = np.zeros((masks.shape[0], masks.shape[1]))
      for j in range(masks.shape[2]):
      merged_mask[masks[:,:,j]==True] = True
      masks_prediction[:,:,i] = merged_mask


      Here is the function which applies the masks:



      def apply_mask(image, mask, color, alpha=0.5):
      """Apply the given mask to the image.
      """
      for c in range(3):
      image[:, :, c] = np.where(mask == 1,
      image[:, :, c] *
      (1 - alpha) + alpha * color[c] * 255,
      image[:, :, c])
      return image


      and in the main file, here is how it is used:



      mask = masks[:, :, i]
      if show_mask:
      masked_image = apply_mask(masked_image, mask, color)


      So I need to make a modification in somewhere here but I don't know where exactly.







      python image opencv tensorflow image-processing






      share|improve this question













      share|improve this question











      share|improve this question




      share|improve this question










      asked Nov 23 '18 at 8:09









      SchützeSchütze

      55527




      55527
























          1 Answer
          1






          active

          oldest

          votes


















          1














          I think the mask you are looking for is provided by the code :



          mask = masks[:, :, i]


          where i refers to the number of mask you have.



          You can obtain the average values of the mask region from the original image using the openCV function mean



          Here is how your code should look like:



          mask = masks[:, :, i]
          avg_masked_value = cv2.mean(original_image,mask)


          where original_image is the original image you loaded and avg_masked_value will contain 3x1 array of averaged value.






          share|improve this answer
























            Your Answer






            StackExchange.ifUsing("editor", function () {
            StackExchange.using("externalEditor", function () {
            StackExchange.using("snippets", function () {
            StackExchange.snippets.init();
            });
            });
            }, "code-snippets");

            StackExchange.ready(function() {
            var channelOptions = {
            tags: "".split(" "),
            id: "1"
            };
            initTagRenderer("".split(" "), "".split(" "), channelOptions);

            StackExchange.using("externalEditor", function() {
            // Have to fire editor after snippets, if snippets enabled
            if (StackExchange.settings.snippets.snippetsEnabled) {
            StackExchange.using("snippets", function() {
            createEditor();
            });
            }
            else {
            createEditor();
            }
            });

            function createEditor() {
            StackExchange.prepareEditor({
            heartbeatType: 'answer',
            autoActivateHeartbeat: false,
            convertImagesToLinks: true,
            noModals: true,
            showLowRepImageUploadWarning: true,
            reputationToPostImages: 10,
            bindNavPrevention: true,
            postfix: "",
            imageUploader: {
            brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
            contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
            allowUrls: true
            },
            onDemand: true,
            discardSelector: ".discard-answer"
            ,immediatelyShowMarkdownHelp:true
            });


            }
            });














            draft saved

            draft discarded


















            StackExchange.ready(
            function () {
            StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53442801%2faveraging-pixels-in-image-roi%23new-answer', 'question_page');
            }
            );

            Post as a guest















            Required, but never shown

























            1 Answer
            1






            active

            oldest

            votes








            1 Answer
            1






            active

            oldest

            votes









            active

            oldest

            votes






            active

            oldest

            votes









            1














            I think the mask you are looking for is provided by the code :



            mask = masks[:, :, i]


            where i refers to the number of mask you have.



            You can obtain the average values of the mask region from the original image using the openCV function mean



            Here is how your code should look like:



            mask = masks[:, :, i]
            avg_masked_value = cv2.mean(original_image,mask)


            where original_image is the original image you loaded and avg_masked_value will contain 3x1 array of averaged value.






            share|improve this answer




























              1














              I think the mask you are looking for is provided by the code :



              mask = masks[:, :, i]


              where i refers to the number of mask you have.



              You can obtain the average values of the mask region from the original image using the openCV function mean



              Here is how your code should look like:



              mask = masks[:, :, i]
              avg_masked_value = cv2.mean(original_image,mask)


              where original_image is the original image you loaded and avg_masked_value will contain 3x1 array of averaged value.






              share|improve this answer


























                1












                1








                1







                I think the mask you are looking for is provided by the code :



                mask = masks[:, :, i]


                where i refers to the number of mask you have.



                You can obtain the average values of the mask region from the original image using the openCV function mean



                Here is how your code should look like:



                mask = masks[:, :, i]
                avg_masked_value = cv2.mean(original_image,mask)


                where original_image is the original image you loaded and avg_masked_value will contain 3x1 array of averaged value.






                share|improve this answer













                I think the mask you are looking for is provided by the code :



                mask = masks[:, :, i]


                where i refers to the number of mask you have.



                You can obtain the average values of the mask region from the original image using the openCV function mean



                Here is how your code should look like:



                mask = masks[:, :, i]
                avg_masked_value = cv2.mean(original_image,mask)


                where original_image is the original image you loaded and avg_masked_value will contain 3x1 array of averaged value.







                share|improve this answer












                share|improve this answer



                share|improve this answer










                answered Nov 23 '18 at 13:19









                yapws87yapws87

                1,023213




                1,023213
































                    draft saved

                    draft discarded




















































                    Thanks for contributing an answer to Stack Overflow!


                    • Please be sure to answer the question. Provide details and share your research!

                    But avoid



                    • Asking for help, clarification, or responding to other answers.

                    • Making statements based on opinion; back them up with references or personal experience.


                    To learn more, see our tips on writing great answers.




                    draft saved


                    draft discarded














                    StackExchange.ready(
                    function () {
                    StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fstackoverflow.com%2fquestions%2f53442801%2faveraging-pixels-in-image-roi%23new-answer', 'question_page');
                    }
                    );

                    Post as a guest















                    Required, but never shown





















































                    Required, but never shown














                    Required, but never shown












                    Required, but never shown







                    Required, but never shown

































                    Required, but never shown














                    Required, but never shown












                    Required, but never shown







                    Required, but never shown







                    Popular posts from this blog

                    How to change which sound is reproduced for terminal bell?

                    Title Spacing in Bjornstrup Chapter, Removing Chapter Number From Contents

                    Can I use Tabulator js library in my java Spring + Thymeleaf project?