99爱在线视频这里只有精品_窝窝午夜看片成人精品_日韩精品久久久毛片一区二区_亚洲一区二区久久

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

CSC345編程代寫、代做Python語言程序

時間:2023-12-08  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



CSC345/M45 Big Data and Machine Learning
Coursework: Object Recognition
Policy
1. To be completed by students working individually.
2. Feedback: Individual feedback on the report is given via the rubric within Canvas.
3. Learning outcome: The tasks in this assignment are based on both your practical
work in the lab sessions and your understanding of the theories and methods. Thus,
through this coursework, you are expected to demonstrate both practical skills and
theoretical knowledge that you have learned through this module. You also learn to
formally present your understandings through technical writing. It is an opportunity
to apply analytical and critical thinking, as well as practical implementation.
4. Unfair practice: This work is to be attempted individually. You may get help from
your lecturer, academic tutor, and lab tutor, but you may not collaborate with your
peers. Copy and paste from the internet is not allowed. Using external code
without proper referencing is also considered as breaching academic integrity.
5. University Academic Integrity and Academic Misconduct Statement: By
submitting this coursework, electronically and/or hardcopy, you state that you fully
understand and are complying with the university's policy on Academic Integrity and
Academic Misconduct.
The policy can be found at https://www.swansea.ac.uk/academic-services/academicguide/assessment-issues/academic-integrity-academic-misconduct.
6. Submission deadline: Both the report and your implemented code in Python need to
be submitted electronically to Canvas by 11AM 14
th December.
1. Task
The amount of image data is growing exponentially, due in part to convenient and cheap camera
equipment. Teaching computers to recognise objects within a scene has tremendous application
prospects, with applications ranging from medical diagnostics to Snapchat filters. Object
recognition problems have been studied for years in machine learning and computer vision
fields; however, it is still a challenging and open problem for both academic and industry
researchers. The following task is hopefully your first small step on this interesting question
within machine learning.
You are provided with a small image dataset, where there are 100 different categories of objects,
each of which has 500 images for training and 100 images for testing. Each individual image
only contains one object. The task is to apply machine learning algorithms to classify the testing
images into object categories. Code to compute image features and visualize an image is
provided, you can use it to visualize the images and compute features to use in your machine
learning algorithms. You will then use a model to perform classification and report quantitative
results. You do not have to use all the provided code or methods discussed in the labs so far.
You may add additional steps to the process if you wish. You are encouraged to use the
implemented methodology from established Python packages taught in the labsheets (i.e.
sklearn, skimage, keras, scipy,…). You must present a scientific approach, where you make
suitable comparison between at least two methods.
2. Image Dataset – Subset of CIFAR-100
We provide the 100 object categories from the complete CIFAR-100 dataset. Each category
contains 500 training images and 100 testing images, which are stored in two 4D arrays. The
corresponding category labels are also provided. The objects are also grouped into 20 “superclasses”. The size of each image is fixed at **x**x3, corresponding to height, width, and colour
channel, respectively. The training images will be used to train your model(s), and the testing
images will be used to evaluate your model(s). You can download the image dataset and
relevant code for visualization and feature extraction from the Canvas page.
There are six numpy files provided, as follows:
• trnImage, **x**x3x50000 matrix, training images (RGB image)
• trnLabel_fine, 50000 vector, training labels (fine granularity)
• trnLabel_coarse, 50000 vector, training labels (coarse granularity)
• tstImage, **x**x3x10000 matrix, testing images (RGB image)
• tstLabel_fine, 10000 vector, testing labels (fine granularity)
• tstLabel_coarse, 10000 vector, testing labels (coarse granularity)
The data is stored within a 4D matrix, and for many of you this will be the first time seeing a
high dimensionality tensor. Although this can seem intimidating, it is relatively
straightforward. The first dimension is the height of the image, the second dimension is the
width, the third dimension is the colour channels (RGB), and the fourth dimension is the
samples. Indexing into the matrix is like as with any other numeric array in Python, but now
we deal with the additional dimensions. So, in a 4D matrix ‘X’, to index all pixels in all
channels of the 5th image, we use the index notation X[:, :, :, 4]. So, in a generic form, if we
want to index into the i,j,k,lth element of X we use X[i, j, k, l].
Figure 1. Coarse Categories of CIFAR-100 Dataset
aquatic mammals
fish
flowers
food containers
fruit and vegetables
household electrical devices
household furniture
insects
large carnivores
large man-made outdoor things
large natural outdoor scenes
large omnivores and herbivores
medium-sized mammals
non-insect invertebrates
people
reptiles
small mammals
trees
vehicles 1
vehicles 2
3. Computing Features and Visualizing Images
A notebook, RunMe.ipynb, is provided to explain the concept of computing image features.
The notebook is provided to showcase how to use the skimage.feature.hog() function to obtain
features we wish to train our models on, how to visualize these features as an image, and how
to visualize a raw image from the 4D array. You do not need to use this if your experiments
do not require it! You should also consider the dimensionality of the problem and the features
being used to train your models, this may lead to some questions you might want to explore.
The function utilises the Histogram of Orientated Gradients method to represent image domain
features as a vector. You are NOT asked to understand how these features are extracted from
the images, but feel free to explore the algorithm, underlying code, and the respective Python
package APIs. You can simply treat the features as the same as the features you loaded from
Fisher Iris dataset in the Lab work. Note that the hog() method can return two outputs, the first
are the features, the second is an image representation of those features. Computing the second
output is costly and not needed, but RunMe.ipynb provides it for your information.
4. Learning Algorithms
You can find all relative learning algorithms in the lab sheets and lecture notes. You can use
the following algorithms (Python (and associated packages) built-in functions) to analyse the
data and carry out the classification task. Please note: if you feed certain algorithms with a
large chunk of data, it may take a long time to train. Not all methods are relevant to the task.
• Lab sheet 2:
o K-Means
o Gaussian Mixture Models
• Lab sheet 3:
o Linear Regression
o Principal Component Analysis
o Linear Discriminative Analysis
• Lab sheet 4:
o Support Vector Machine
o Neural Networks
o Convolutional Neural Networks
5. Benchmark and Discussion
Your proposed method should be trained on the training set alone, and then evaluated on the
testing set. To evaluate: you should count, for each category, the percentage of correct
recognition (i.e., classification), and report the confusion matrix. Note that the confusion matrix
can be large, and so you may need to think of ways to present appropriately; you can place it
in your appendices if you wish, or show a particularly interesting sub-region.
The benchmark to compare your methods with is 39.43%, averaged across all 20 super
categories, and 24.49% for the finer granularity categories. Note: this is a reference, not a
target. You will not lose marks for being slightly under this target, but you should be aware of
certain indicative results (very low or very high) that show your method/implementation may
not be correct. Your report will contain a section in which you discuss your results.
6. Assessment
You are required to write a 3-page conference/publication style report to summarize your
proposed method and the results. Your report should contain the following sections:
1. Introduction. Overview of the problem, proposed solution, and experimental results.
2. Method. Present your proposed method in detail. This should cover how the features
are extracted, any feature processing you use (e.g., clustering and histogram generation,
dimensionality reduction), which classifier(s) is/are used, and how they are trained and
tested. This section may contain multiple sub-sections.
3. Results. Present your experimental results in this section. Explain the evaluation
metric(s) you use and present the quantitative results (including the confusion matrix).
4. Conclusion. Provide a summary for your method and the results. Provide your critical
analysis; including shortcomings of the methods and how they may be improved.
5. References. Include correctly formatted references where appropriate. References are
not included in the page limit.
6. Appendices. You may include appendix content if you wish for completeness,
however the content you want graded must be in the main body of the report.
Appendices are not included in the page limit.
Page Limit: The main body of the report should be no more than 3 pages. Font size should be
no smaller than 10, and the text area is approximately 9.5x6 inches. You may use images but
do so with care; do not use images to fill up the pages. You may use an additional cover sheet,
which has your name and student number.
Source Code: Your submission should be professionally implemented and must be formatted
as an ipynb notebook. You may produce your notebook either locally (Jupyter, VSCode etc.),
or you may utilize Google Colab to develop your notebook, however your submission must be
an ipynb notebook. Remember to carefully structure, comment, and markdown your
implementation for clarity.
7. Submission
You will be given the marking rubric in advance of the submission deadline. This assignment
is worth 20% of the total module credit.
Submit your work electronically to Canvas. Your report should be in PDF format only.
Your code must be in a .ipynb format. Both files should be named with your student number,
i.e. 123456.pdf and 123456.ipynb, where 123456 is your student number.
There are two submission areas on Canvas, one for the report and another for the .ipynb
notebook. You must upload both submissions to the correct area by the deadline.
The deadline for this coursework is 11AM 14
請加QQ:99515681 或郵箱:99515681@qq.com   WX:codehelp

掃一掃在手機打開當前頁
  • 上一篇:代寫COMP26120、代做C++, Java/Python編程
  • 下一篇:MATH4063代做、C++編程語言代寫
  • 無相關信息
    合肥生活資訊

    合肥圖文信息
    急尋熱仿真分析?代做熱仿真服務+熱設計優化
    急尋熱仿真分析?代做熱仿真服務+熱設計優化
    出評 開團工具
    出評 開團工具
    挖掘機濾芯提升發動機性能
    挖掘機濾芯提升發動機性能
    海信羅馬假日洗衣機亮相AWE  復古美學與現代科技完美結合
    海信羅馬假日洗衣機亮相AWE 復古美學與現代
    合肥機場巴士4號線
    合肥機場巴士4號線
    合肥機場巴士3號線
    合肥機場巴士3號線
    合肥機場巴士2號線
    合肥機場巴士2號線
    合肥機場巴士1號線
    合肥機場巴士1號線
  • 短信驗證碼 豆包 幣安下載 AI生圖 目錄網

    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

    99爱在线视频这里只有精品_窝窝午夜看片成人精品_日韩精品久久久毛片一区二区_亚洲一区二区久久

          9000px;">

                麻豆精品蜜桃视频网站| 国产精品视频免费看| 日韩成人精品在线| 亚洲柠檬福利资源导航| 国产精品视频在线看| 亚洲精品在线一区二区| 欧美一区二区人人喊爽| 欧美日韩国产高清一区二区 | 久久午夜老司机| 69堂国产成人免费视频| 欧美午夜一区二区| 日本久久电影网| 在线免费av一区| 欧洲另类一二三四区| 欧美日韩一区二区在线视频| 欧美日免费三级在线| 911精品国产一区二区在线| 777久久久精品| 欧美一区二区三区的| 精品国产乱码久久| 久久久.com| 亚洲欧美色一区| 亚洲免费观看高清| 亚洲国产成人高清精品| 亚洲成av人影院在线观看网| 男男gaygay亚洲| 久久成人免费日本黄色| 国产精品一区在线观看乱码| 国产.欧美.日韩| 欧美日韩一级视频| 欧美日本韩国一区| 欧美大片在线观看| 中文字幕免费不卡在线| 一区二区免费看| 麻豆国产精品777777在线| 成人小视频免费在线观看| 欧美亚一区二区| 26uuu国产在线精品一区二区| 国产精品久久久久桃色tv| 亚洲午夜久久久久久久久电影院| 韩国毛片一区二区三区| 欧洲色大大久久| 国产亚洲精品资源在线26u| 亚洲猫色日本管| 久久99日本精品| 色综合久久综合| 久久综合狠狠综合久久综合88 | 91丨九色porny丨蝌蚪| 欧美精品777| 日本一区二区免费在线| 爽好多水快深点欧美视频| 国产精品888| 欧美日韩精品电影| 亚洲国产精品国自产拍av| 日韩黄色片在线观看| 一本久久精品一区二区| 国产欧美一区二区在线| 免费看欧美美女黄的网站| 91福利社在线观看| 国产精品国产三级国产普通话蜜臀| 日本sm残虐另类| 在线免费观看日韩欧美| 中文字幕第一页久久| 精品亚洲成av人在线观看| 欧美区视频在线观看| 亚洲天堂福利av| 丁香亚洲综合激情啪啪综合| 欧美mv和日韩mv国产网站| 亚洲成a人v欧美综合天堂| 色欧美日韩亚洲| 亚洲乱码国产乱码精品精的特点| 国产福利一区在线观看| 欧美电影免费提供在线观看| 奇米四色…亚洲| 在线成人免费观看| 天天影视涩香欲综合网| 欧美视频在线观看一区| 亚洲一级片在线观看| 在线免费观看不卡av| 一区二区三区四区激情 | 色悠悠久久综合| 国产精品人人做人人爽人人添 | 亚洲丝袜另类动漫二区| 成人永久aaa| 国产精品久久久久久久久免费丝袜| 国产成人在线视频免费播放| 欧美成人精品福利| 国内成+人亚洲+欧美+综合在线 | 东方aⅴ免费观看久久av| 久久精品一区二区| 高清成人在线观看| 亚洲国产高清aⅴ视频| 成熟亚洲日本毛茸茸凸凹| 国产亚洲欧美日韩在线一区| 国产福利一区二区| 国产精品久久久久影院亚瑟| 成人综合在线网站| 欧美激情一区二区三区全黄| 99久久伊人精品| www.欧美.com| 日韩成人精品在线| 狠狠狠色丁香婷婷综合激情| 国产精品国产三级国产a| 蜜臀久久久99精品久久久久久| 亚洲国产精品成人综合| 欧美日韩卡一卡二| 亚洲精品第1页| 亚洲精品第一国产综合野| 一区在线观看免费| 7777精品伊人久久久大香线蕉超级流畅| 亚洲精品水蜜桃| 欧美一区二区成人| 亚洲一区二区三区三| 国产精品第五页| 国产农村妇女精品| 99久久精品情趣| 91丨porny丨国产入口| 免费一级欧美片在线观看| 在线播放日韩导航| 精品一区二区三区久久久| 日韩**一区毛片| 亚洲一区二区三区免费视频| 中文字幕一区二区三| 9i在线看片成人免费| 水野朝阳av一区二区三区| 在线播放国产精品二区一二区四区| 国内久久婷婷综合| 免费高清视频精品| 亚洲男人天堂av网| 激情欧美日韩一区二区| 欧美丝袜第三区| 亚洲综合视频在线观看| 激情久久五月天| 精品国产免费人成电影在线观看四季| 毛片不卡一区二区| 91精品国产手机| 亚洲精选在线视频| 亚洲成人激情自拍| 成人黄色免费短视频| 1区2区3区精品视频| 一本一本大道香蕉久在线精品 | 久久久久成人黄色影片| 亚洲嫩草精品久久| 亚洲一区二区三区影院| 欧美情侣在线播放| 激情欧美一区二区三区在线观看| 亚洲高清视频中文字幕| 欧美日韩视频在线一区二区| 亚洲欧美中日韩| 蜜桃av一区二区| 欧美二区乱c少妇| 国产精品人妖ts系列视频| 日韩高清在线电影| 欧美在线不卡一区| 午夜精品视频在线观看| 不卡的av在线| 欧美四级电影网| 久久久噜噜噜久噜久久综合| 日韩欧美三级在线| 久久久精品一品道一区| 国产精品久久影院| 91精品中文字幕一区二区三区| 免费人成网站在线观看欧美高清| 国产成人在线免费观看| 精品视频色一区| 国产精品久久久久婷婷二区次| 国产女人aaa级久久久级 | 久久综合视频网| 日韩精品国产精品| 一区二区三区 在线观看视频| 欧美日韩免费一区二区三区视频| 免费人成在线不卡| 91麻豆精品国产91久久久久久| 激情综合网激情| 国产精品91一区二区| 国产成人av电影在线观看| 国产网站一区二区三区| 国产一区二区毛片| 亚洲va韩国va欧美va| 国产精品国产三级国产三级人妇 | 亚洲最色的网站| 国产农村妇女精品| 欧美一区二区三区不卡| 91尤物视频在线观看| 精品一区在线看| 亚洲国产成人精品视频| 亚洲欧美在线另类| 国产欧美精品一区二区色综合朱莉 | 久久人人超碰精品| 蜜臂av日日欢夜夜爽一区| 久久99深爱久久99精品| 国产aⅴ精品一区二区三区色成熟| 岛国av在线一区| 精品国产在天天线2019| 色一情一乱一乱一91av| av男人天堂一区| 成人的网站免费观看| av成人动漫在线观看| 成人h动漫精品| 成人精品鲁一区一区二区|