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Watershed Segmentation Indepth Intuition | Digital Image Processing 

Knowledge Amplifier
Подписаться 28 тыс.
Просмотров 34 тыс.
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Any grayscale image can be viewed as a topographic surface where high intensity denotes peaks and hills while low intensity denotes valleys. You start filling every isolated valleys (local minima) with different colored water (labels). As the water rises, depending on the peaks (gradients) nearby, water from different valleys, obviously with different colors will start to merge. To avoid that, you build barriers in the locations where water merges. You continue the work of filling water and building barriers until all the peaks are under water. Then the barriers you created gives you the segmentation result.
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21 авг 2024

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Комментарии : 37   
@newbie6036
@newbie6036 3 года назад
Thx very much! This is probably one of the most intuitive explanation I can find so far.
@KnowledgeAmplifier1
@KnowledgeAmplifier1 3 года назад
Thank You Newbie for this inspiring comment ! Happy Learning :-)
@hinaimran9130
@hinaimran9130 Год назад
Very nice and simple explanation. Couldn't find such detail on the internet.
@KnowledgeAmplifier1
@KnowledgeAmplifier1 Год назад
Glad to know the video is helpful to you hina imran! Happy Learning
@mohdsaqib304
@mohdsaqib304 3 месяца назад
@n-hexane8271
@n-hexane8271 3 месяца назад
thankyou sir you helped me pass my exam
@KnowledgeAmplifier1
@KnowledgeAmplifier1 3 месяца назад
Glad to hear that @n-hexane8271! Happy Learning :-)
@HARSHSINGH-eq6vp
@HARSHSINGH-eq6vp 2 месяца назад
Amazing explanation bro Thanx
@KnowledgeAmplifier1
@KnowledgeAmplifier1 2 месяца назад
Glad to hear this @HARSHSINGH-eq6vp! Happy Learning
@harshlunia6093
@harshlunia6093 8 месяцев назад
Video justifies the title, indeed intuitive. Thank you! Apni ki bangali ?? 😁
@KnowledgeAmplifier1
@KnowledgeAmplifier1 8 месяцев назад
Haa Harsh Lunia, Ami bangali 😊ভিডিওটি ভালো লেগেছে জেনে খুশি হলাম!!
@muhammadtaha1005
@muhammadtaha1005 8 месяцев назад
Thanks alot sir
@KnowledgeAmplifier1
@KnowledgeAmplifier1 8 месяцев назад
You are welcome Muhammad Taha! Happy Learning
@rodmallen9041
@rodmallen9041 Год назад
today I particularly learned about Watershed algorithm and the usage of the word 'particular'. hehehe nice video bro. tks for sharing
@KnowledgeAmplifier1
@KnowledgeAmplifier1 Год назад
😅😁Glad to know the video is helpful to you Rod Mallen! Happy Learning buddy
@hariharanm9930
@hariharanm9930 Год назад
Thanks a lot. This helped refine my understanding of this concept
@KnowledgeAmplifier1
@KnowledgeAmplifier1 Год назад
Glad to hear that Hariharan M! You can refer this playlist on Watershed Segmentation if you want to explore more on this topic -- ru-vid.com/group/PLjfRmoYoxpNrVgEBfU7HWODwl9GtZjRq5&feature=shares Wish you a very Happy New Year & Happy Learning
@user-ph7sz7oz3y
@user-ph7sz7oz3y Год назад
you guys need a audio amplifier
@KnowledgeAmplifier1
@KnowledgeAmplifier1 9 месяцев назад
Hello Kulbhushan Singh, Thank you for your feedback! I appreciate your input. We'll definitely look into improving our audio quality to enhance your viewing experience
@vantal4115
@vantal4115 Год назад
Great explanation🎉🎉
@KnowledgeAmplifier1
@KnowledgeAmplifier1 Год назад
Thank you Van Tal! Happy Learning
@SAINIVEDH
@SAINIVEDH 2 года назад
So watershed is Indian Roads ?
@KnowledgeAmplifier1
@KnowledgeAmplifier1 2 года назад
haha ,but India is changing , this is new India , quality roads are keep on expanding under the observation of Nitin Gadkari & dedicated engineers & workers :-)
@yupp_harish3936
@yupp_harish3936 Год назад
most underrated comment
@bhuta-tathata
@bhuta-tathata 2 года назад
very good illustration
@KnowledgeAmplifier1
@KnowledgeAmplifier1 2 года назад
Thank You Kiriya Wu! Happy Learning :-)
@rajasekhargadde2473
@rajasekhargadde2473 3 года назад
sky blue, green, yello and orange circles intensity is same for entire circle then how it will choose local minima? in the first example based on intensity value we can reach local minima but in the second example how it is possible?
@KnowledgeAmplifier1
@KnowledgeAmplifier1 3 года назад
The Image containing sky blue, green, yellow and orange circles is not the input image , those different colors are showing different segments , input image is in the left of that slide, you can refer this video once , hope it will clear all your doubts: Example of Segmentation using Watershed Algorithm in Matlab: ru-vid.com/video/%D0%B2%D0%B8%D0%B4%D0%B5%D0%BE-s2wVJpeoUcY.html Happy Learning :-)
@Ahmad-qy8ze
@Ahmad-qy8ze Год назад
love from Pakistan
@anandhakannan2435
@anandhakannan2435 2 года назад
thank you bro
@KnowledgeAmplifier1
@KnowledgeAmplifier1 2 года назад
You're welcome Anandha Kannan! Happy Learning :-)
@poojanpandya8864
@poojanpandya8864 2 года назад
Thank you so much.
@KnowledgeAmplifier1
@KnowledgeAmplifier1 2 года назад
Thanks & Welcome Poojan Pandya! Happy Learning :-)
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