国产人妻人伦精品_欧美一区二区三区图_亚洲欧洲久久_日韩美女av在线免费观看

合肥生活安徽新聞合肥交通合肥房產生活服務合肥教育合肥招聘合肥旅游文化藝術合肥美食合肥地圖合肥社保合肥醫院企業服務合肥法律

MISCADA代做、代寫Python程序語言
MISCADA代做、代寫Python程序語言

時間:2025-03-04  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



Assignment 
MISCADA Computer Vision module
Academic year 2024/2025
  
Academic in charge and contact information
Professor Paolo Remagnino, Department of Computer Science
Introduction
This assignment is split in two parts, with separate deadlines; details follow.
Description (15%)
A thorough description of the used libraries and methods and the results is expected. Please refer to the marking scheme table for more detail.
Part 1 (30%)
A computed tomography (CT) scan is a non-invasive imaging procedure that uses X-rays to create detailed pictures of the inside of the body. CT scans are used to diagnose and treat a variety of conditions, such as tumours, pneumonia and internal bleeding.
A CT scan is composed of a large and variable number of slices, each one of them is a greyscale image, examples of CT slices are provided in figure 1.
    
    
figure 1 examples of CT scan slices: top row contains raw data, bottom row annotated data: both leg bones and calcium concentration are labelled.
For this part, you will have to search for areas that might indicate the presence of calcium deposit. In CT scans, calcium and bones are visible as brighter areas, while other organs usually have low intensity values. The provided data (see later in the document for details) represent portions of CT scans of the lower limbs. In simpler terms, those slices represent cross sections of both patient’s legs. Presence of calcium might indicate serious indication of blockages in the arteries. So, the larger is the amount of deposit, the higher the risk is for a patient.
For this part, you will have to develop code in Python, using Jupyter Notebook to provide solutions to the following two tasks:
Task 1 (15%): creating masks on a slice basis
You are asked to create greyscale masks for each slice of the given CT scans. Each CT slice will need to be normalised to represent a probability density map. Segmentation must then be applied to each map to highlight those pixels that might indicate the presence of calcium concentration.
Task 2 (15%): estimating volumes of calcium deposit
Calcium deposit is a three-dimensional object, as an artery is a 3D object, while each CT slice is merely a 2D representation of the deposit at a given position in the CT scan. You are asked to make use of the probability density maps created for the previous task, to develop code to estimate the volume of calcium deposit across CT scan slices. Do assume the thickness of each slice is 0.5mm, assume pixels are squares of 1mmx1mm size. 
Part 2 (55%)
You must develop code to analyse video clips taken from the last Olympic games (Paris 2024). 
To start with, you are asked to download the video clips from Blackboard. They have been prepared for you, instructions where data can be found are provided later.
For this part, you have additional tasks to solve; please read the following instructions for details:
Task 3 (15%): Target detection - for this part, you are asked to exploit one of the taught algorithms to extract bounding boxes that identify the targets in the scene. Targets are represented by either objects or people moving in the video clips.
Expected Output: Bounding rectangles should be used to show the target, as well as an ID and/or a different colour per target. 
Task 4 (20%): Target tracking - for this part, you are asked to use one of the taught techniques to track the targets. Tracking does mean using a filter to estimate and predict the dynamics of the moving target, not simply detecting targets in each frame.
Expected Output: For this task you should provide short video clips using the processed image frames, the current position of the targets in the scene and their trajectories. Targets should be highlighted with a bounding rectangle in colour or a polygonal shape and their trajectories with a polyline in red (do see the examples in figure 2). Ideally, you could have prediction and new measurement highlighted using two bounding rectangles of different colour per target.
    
figure 2 example of tracked targets: bounding rectangles and trajectories.
Task 5 (20%): Optical flow – for this task, you are asked to use one of the algorithms taught in class to estimate and visualise the optical flow of the analysed scene.
Expected output: Once you have run the algorithm of your choice you can use any of methods used in the workshop or any method you find one the Internet to visualise the optical flow. A video clip must be generated, with optical flow overlapped to the original clip. Figure 3 shows two different ways to visualise optical flow.
    
figure 3 visualising optical flow using vectors (left), and dynamics direction using colour.
Dataset
Dataset of CT scans and Olympic clips are available in our Assignment folder on Blackboard. 
Marking scheme
Task    comment    %
Descriptions     A general introduction to your solutions must be provided (5%), as well as a detailed description of how you solve each of the following tasks (10%).    15
Task 1    Hint: CT scan slices are greyscale images, segmentation can be implemented using one of the taught methods/algorithms. For the normalisation and generation of probability maps needs to enforce each map to sum up to one. 
Marking: 10% will be assigned to a fully working method, 5% only if the method partially works.    15
Task 2    Hint: one can think of aligning CT slices and related segmented maps. Combining adjacent slices means checking the likelihood of calcium deposit and building an estimate of the volume. 
Marking: the implementation must clearly demonstrate volume estimates are correctly built. Full 15% to a complete solution, if the solution works in part, then 10%.    15
Task 3    Hint: For this part I am expecting you to exploit the latest YOLO and SAM versions to detect the targets. You are also welcome to use any traditional method of your choice. 
Marking: the implementation exploits existing deep architectures, so validation and testing will be essential to get full marks. Ideally, the result will have to show “tight” bounding rectangles or closed polylines for the extracted targets, with an error measure such as the intersection over union (IoU) as a viable metric. Comparison of existing architectures/methods applied to the problem attracts 10%, the other 5% is for the most suitable metric to assess the result.    15
Task 4    Hint: For this task, you can use the dynamic filters you have been taught to track targets in the scene. You can feel free to use any deep learning method as well you have read during the four weeks.
Marking: the accuracy of the tracking will be a determining factor to obtain full marks, you are recommended to use the metrics you used to solve Task 3. Full marks if any spatial-temporal filter is implemented and manages to track the targets in the scene. A comparison of at least two filters attracts 8%. The other 5% is for the generation of a video clip as qualitative output and 7% for quantitative results.    20
Task 5    Hint: For this task, you can use any of the algorithms taught to use for the detection and visualisation of optical flow. Again, you can feel free to use any deep learning method as well you have read during the four weeks.
Marking: 10% for the detection of the optical flow, trying to disambiguate between moving camera and targets and 10% for the visualisation. The latter must be integrated in a video clip, with flow overlapped over the video clip frames.    20
Total     100
Submission instructions
For each part, you are asked to create a Jupyter Notebook, where you will provide the textual description of your solutions and the implemented code. Your notebook should be structured in sections. An introduction should describe in detail the libraries you used, where to find them and how you solved the tasks. Then you should include one section for each task solution, where again you describe your solution. The code must be executed, so that the solutions are visualised, in terms of graphics, images and results; it is strongly recommended you also include snippets of the formulae implemented by the used algorithms and the graphics of the employed architecture. Your code should be implemented in Python, using OpenCV as the main set of computer vision libraries. PyTorch or TensorFlow can be used to use the deep learning methods you have chosen. Please do make sure your code runs and it is executed.  Notebooks will have to be uploaded on Gradescope, while all the videos to Panopto.
Submission and feedback deadlines
Please refer to the following table for details on the submissions:
Part     Release date    Submission date    Submission method    Feedback date
1    17 Jan 2025    20 Feb 2025    Gradescope    20 Mar 2025
2    3 Feb 2025    17 Mar 2025    Gradescope and Panopto    14 Apr 2025
Extension policy and related documents
If you require an extension for a piece(s) of summative coursework/assignment you MUST complete the form via the Extension Requests App.
On this form you must specify the reason for the request and the extra time required.  Please also ensure that supporting documentation is provided to support your extension request.  
Your extension request will not be considered until supporting documentation has been received.
If the extension is granted the new deadline is at the discretion of the Programme Director.
Once the completed form has been received by the Learning and Teaching Coordinator it will be distributed to your Programme Director who will decide on the outcome.  You will normally be notified by email within two working days of the outcome of your request.
Please note that, until you have received confirmation that your extension request has been approved, you MUST assume that the original deadline still stands.
Further information on the University's extension policy and academic support can be found here.
Where circumstances are extreme and an extension request is not enough a Serious Adverse Circumstances form (SAC) should be considered.

PLAGIARISM and COLLUSION
Students suspected of plagiarism, either of published work or work from unpublished sources, including the work of other students, or of collusion will be dealt with according to Computer Science and University guidelines. Please see:
https://durhamuniversity.sharepoint.com/teams/LTH/SitePages/6.2.4.aspx
https://durhamuniversity.sharepoint.com/teams/LTH/SitePages/6.2.4.1.aspx

PLAGIARISM with chatGPT or/and similar AI tool
Examples of plagiarism include (but are not limited to) presentation of another person's thoughts or writings as one's own, including:
- cutting and pasting text, code or pictures from generative AI services (e.g. ChatGPT).

What is acceptable?
If you want to include any text or code produced using generative AI in a submission, that text or code must be clearly marked as being AI generated, and the generative AI that has produced the text or code must be clearly cited as the source.
The University has provided a guide on generative AI, with the following page on whether it can be used in assessment:


請加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp

掃一掃在手機打開當前頁
  • 上一篇:代寫EL2311、代做SQL編程設計
  • 下一篇:優品花唄全國客服電話-優品花唄24小時人工服務電話
  • 無相關信息
    合肥生活資訊

    合肥圖文信息
    流體仿真外包多少錢_專業CFD分析代做_友商科技CAE仿真
    流體仿真外包多少錢_專業CFD分析代做_友商科
    CAE仿真分析代做公司 CFD流體仿真服務 管路流場仿真外包
    CAE仿真分析代做公司 CFD流體仿真服務 管路
    流體CFD仿真分析_代做咨詢服務_Fluent 仿真技術服務
    流體CFD仿真分析_代做咨詢服務_Fluent 仿真
    結構仿真分析服務_CAE代做咨詢外包_剛強度疲勞振動
    結構仿真分析服務_CAE代做咨詢外包_剛強度疲
    流體cfd仿真分析服務 7類仿真分析代做服務40個行業
    流體cfd仿真分析服務 7類仿真分析代做服務4
    超全面的拼多多電商運營技巧,多多開團助手,多多出評軟件徽y1698861
    超全面的拼多多電商運營技巧,多多開團助手
    CAE有限元仿真分析團隊,2026仿真代做咨詢服務平臺
    CAE有限元仿真分析團隊,2026仿真代做咨詢服
    釘釘簽到打卡位置修改神器,2026怎么修改定位在范圍內
    釘釘簽到打卡位置修改神器,2026怎么修改定
  • 短信驗證碼 豆包網頁版入口 破天一劍 目錄網 排行網

    關于我們 | 打賞支持 | 廣告服務 | 聯系我們 | 網站地圖 | 免責聲明 | 幫助中心 | 友情鏈接 |

    Copyright © 2025 hfw.cc Inc. All Rights Reserved. 合肥網 版權所有
    ICP備06013414號-3 公安備 42010502001045

    国产人妻人伦精品_欧美一区二区三区图_亚洲欧洲久久_日韩美女av在线免费观看
    欧美亚洲国产日本| 久久久国产影院| 亚洲最大成人网色| 国产精品无码专区在线观看| 国产精彩视频一区二区| 国产欧美va欧美va香蕉在线| 欧美韩国日本精品一区二区三区| 日本一区二区三区四区视频| 中文字幕一区二区三区四区五区六区 | 99国产视频| 91久色国产| 日韩视频亚洲视频| 国产精品果冻传媒潘| 欧美日本啪啪无遮挡网站| 亚洲日本精品一区| 日韩极品视频在线观看| 欧美性视频网站| 青青在线免费观看视频| 欧美亚洲另类久久综合| 国产一区二区三区四区五区加勒比| 妓院一钑片免看黄大片| 免费久久久久久| 114国产精品久久免费观看| 91精品国产乱码久久久久久蜜臀| 国产精品专区第二| 91精品免费看| 久久精品91久久香蕉加勒比| 中文字幕精品在线播放| 日本高清+成人网在线观看| 蜜桃免费区二区三区| 国产日韩精品电影| 国产成人+综合亚洲+天堂| 国产精品网站视频| 亚洲一区二区高清视频| 欧美一二三区| 91国内在线视频| 美女精品视频一区| 欧美少妇在线观看| 久久久综合av| 国产精品狠色婷| 亚洲精品国产精品国自产| 日韩精品资源| av一区二区三区四区电影| 国产精品美女久久| 欧美午夜精品久久久久久蜜| 91免费视频国产| 这里只有精品66| 狠狠干视频网站| 久久精品在线视频| 欧美尤物巨大精品爽| 久久久久久久久四区三区| 五码日韩精品一区二区三区视频 | 久久亚洲精品视频| 欧美第一黄网| 国产精品高清免费在线观看| 欧洲在线视频一区| 日韩视频中文字幕| 日韩精品第1页| 精品国产一区二区三区在线观看 | 久久国产天堂福利天堂| 精品一卡二卡三卡四卡日本乱码| 国产成人免费av| 男人添女人下部视频免费| xvideos亚洲| 国产一区免费观看| 亚洲欧美影院| 久久久久久久久久久久久国产| 欧美综合激情| 在线精品日韩| 久久免费一区| 美女999久久久精品视频| 欧美日韩一道本| 亚洲一区二区三区四区在线播放 | 北条麻妃在线视频观看| 蜜臀久久99精品久久久久久宅男 | 黄色一级片在线看| 亚洲高清123| 国产精品福利无圣光在线一区| 国产成人精品a视频一区www| 欧美性视频在线播放| 国产区一区二区| 亚洲精品一品区二品区三品区| 欧美日韩一道本| 久久不射热爱视频精品| 日本一区网站| 亚洲精品免费一区二区三区| 欧美成年人网站| 欧美在线亚洲一区| www.av蜜桃| 国产精品久久久av久久久| 亚洲精品欧洲精品| 日韩欧美精品久久| 欧美精品久久久久久久免费| av网址在线观看免费| 99伊人久久| 久久伊人精品视频| 国产又大又长又粗又黄| 日韩在线观看精品| 国产欧美精品一区二区三区介绍| 国产女主播一区二区| 久久久久久久中文| 日本一区不卡| 久久精品国产成人| 国产免费黄视频| 亚洲五月六月| 国产成人无码av在线播放dvd| 国产在线视频欧美| 正在播放国产精品| 成人免费在线网址| 操日韩av在线电影| 91精品国产高清久久久久久91 | 国产成人免费高清视频| 水蜜桃亚洲一二三四在线| 日韩欧美视频网站| 久久视频这里有精品| 国产精品精品视频| 日本精品免费| 日韩在线视频播放| 久久97精品久久久久久久不卡 | 美女啪啪无遮挡免费久久网站| 日本精品免费一区二区三区| 成人福利网站在线观看| 国产精品99久久久久久久久| 亚洲视频小说| 黄色一级大片免费| 久久亚洲影音av资源网| 国产日韩中文在线| 亚洲一区二区三区乱码| 国产精品夫妻激情| 久久精品视频亚洲| 黄色www在线观看| 九九久久综合网站| 日韩在线观看免费av| 国产精品手机在线| 国产精品老女人精品视频| 一区二区视频在线观看| 热99精品里视频精品| av免费观看国产| 国产精品日韩专区| 色综合久久88色综合天天提莫| 欧美日韩亚洲一区二区三区四区 | 精品国偷自产一区二区三区| 日本精品一区二区三区不卡无字幕 | 91久久久久久久久久久久久| 国产精品久久久久久久久电影网 | 久久久久久12| 欧美一区激情视频在线观看| 日韩欧美一区二区视频在线播放| 久久精品国产亚洲一区二区| 日韩av不卡在线播放| 国产精品高潮呻吟久久av黑人| 日本不卡免费高清视频| 日本不卡在线观看视频| 国产精品视频1区| 久久偷看各类wc女厕嘘嘘偷窃| 奇米888一区二区三区| 日本欧美一级片| 亚洲一区不卡在线| 久久综合免费视频| 91高潮精品免费porn| 国产精品久久成人免费观看| 日本新janpanese乱熟| 成人免费福利视频| 久久精品视频99| 日韩精品在线观看av| 久久国产午夜精品理论片最新版本| 麻豆国产va免费精品高清在线| 欧美做受高潮1| 精品国产欧美成人夜夜嗨| 日本精品一区二区| 日韩中文字幕精品| 欧美国产日韩在线播放| 国产精品无码乱伦| 国产婷婷一区二区三区| 精品国产综合区久久久久久| 精品视频无码一区二区三区| 另类天堂视频在线观看| 国产精品一 二 三| 无码人妻精品一区二区蜜桃网站| 国产精品99免视看9| 国产精品久久久久久av福利软件 | 成人国产一区二区三区| 一区二区高清视频| 91精品久久久久久久久久久久久 | 亚洲乱码日产精品bd在线观看| 国产精品99久久久久久白浆小说 | 国产高清精品软男同| 一本色道久久综合亚洲精品婷婷| 成人在线观看a| 日本韩国在线不卡| 国产精品久久久久久久久久久久久| 国产日韩在线一区| 色综合久久av| 精品国产一二| www.日韩视频| www.欧美黄色| 精品人伦一区二区三区| 亚洲精品国产精品久久| 久久在精品线影院精品国产| 久久久久天天天天|