recodehive / machine-learning-repos

A curated list of awesome machine learning frameworks, libraries and software (by language). I
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💡[Feature]: Stair Cases Segmentation using Deep Learning #796

Closed sreevidya-16 closed 2 months ago

sreevidya-16 commented 2 months ago

Is there an existing issue for this?

Feature Description

I want to develop a Deep Learning Based Stair Segmentation and Behavioral Cloning for Autonomous Stair Climbing

I got this idea by reading this research paper

I want to implement this using PyTorch and Fast.ai library @sanjay-kv, could you please assign me this issue under GSSOC'24

Use Case

Mobile robots are widely used in the surveillance industry, for military and industrial applications. In order to carry out surveillance tasks like urban search and rescue operation, the ability to traverse stairs is of immense significance.

Benefits

No response

Add ScreenShots

No response

Priority

High

Record

github-actions[bot] commented 2 months ago

Thank you for creating this issue! 🎉 We'll look into it as soon as possible. In the meantime, please make sure to provide all the necessary details and context. If you have any questions reach out to LinkedIn. Your contributions are highly appreciated! 😊

Note: This repo is for beginners to learn and start with Opensource we won't accept more than 10 issues from a single person, This restriction applies to Gssoc project which has a similar kind of adding folder files, Points will be reduced when we find Spam.

I Maintain the repo issue twice a day, or ideally 1 day, If your issue goes stale for more than one day you can tag and comment on this same issue.

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sanjay-kv commented 2 months ago

image you already gor 150 max point from this repo so i will be closing this issue

github-actions[bot] commented 2 months ago

Hello @sreevidya-16! Your issue #796 has been closed. Thank you for your contribution!