联系方式

  • QQ:99515681
  • 邮箱:99515681@qq.com
  • 工作时间:8:00-21:00
  • 微信:codinghelp

您当前位置:首页 >> Python编程Python编程

日期:2024-06-02 10:39


CSCI 4261 - Introduction to Computer Vision Faculty of Computer Science, Dalhousie University

Practicum 1

Date Given: May 28, 2024 Due Date: May 31, 2024

Plagiarism Policy

• This assignment is an individual task. Collaboration of any type amounts to a violation of the academic integrity policy and will be reported to the AIO.

• Content should not be copied from any source(s). Please understand the concept and write answers in your own words.

• If you wish to learn more Dalhousie Academic Integrity policy , please visit the following link: https://www.dal.ca/dept/university_secretariat/academic-

integrity.html

    CSCI 4261 – Introduction to Computer Vision

Assessment Criteria

Task Assessment:

• • • •

100%-90% marks:

The solution you have provided is correct and match all the expected requirements.

90%-80% marks:

The solution is correct but there are areas of improvement or context missing.

80%-70% marks:

The solution is close to the correct answer but your approach is correct.

70% or less marks:

Your solution is not correct and there are obvious loops in your understanding.

Requirements:

For your Practicum 1, you must implement the Canny Edge Detection algorithm from scratch. This means you are only able to use numpy and matplotlib libraries. You can only use OpenCV to apply the smoothing and sharpening.

Canny Edge Detection (100%)

For the image titled “building.jpg”, perform:

1. Canny Edge Detection:

a. Apply the Canny Edge Detection algorithm on building.jpg image.

b. Apply the Canny Edge Detection algorithm on the sharpened building.jpg image (for sharpening the image, follow the same approach of the Task A2 of assignment 2)

2. Share your ideas to improve the algorithm to only find the contour of the image and ignore edges inside the building.jpg image.

Submission Criteria

The submission for this assignment will be done on 2 platforms:

CSCI 4261 – Introduction to Computer Vision

1. Document submission:

The documentation should be a PDF that contain the following:

a. Output to all the practical questions.

b. Answers to the questions asked along with the practical questions. c. At the end mention the link to your Gitlab repository.

Submit the PDF on Brightspace before the deadline.

2. Code submission:

a. Using the repository you created before. (Do not create a new one)

c. Add a new directory named “practicum1”. d. Add your python files containing the code.

Upload you code before the practicum deadline, code pushed after the deadline will not be marked.

You can name the python files according to your preference but the name should clearly indicate the task and subtask they are associated with.

Failure to follow the submission criteria can result into 10% deduction in marks.

  CSCI 4261 – Introduction to Computer Vision


版权所有:编程辅导网 2021 All Rights Reserved 联系方式:QQ:99515681 微信:codinghelp 电子信箱:99515681@qq.com
免责声明:本站部分内容从网络整理而来,只供参考!如有版权问题可联系本站删除。 站长地图

python代写
微信客服:codinghelp