<samp id="e4iaa"><tbody id="e4iaa"></tbody></samp>
<ul id="e4iaa"></ul>
<blockquote id="e4iaa"><tfoot id="e4iaa"></tfoot></blockquote>
    • <samp id="e4iaa"><tbody id="e4iaa"></tbody></samp>
      <ul id="e4iaa"></ul>
      <samp id="e4iaa"><tbody id="e4iaa"></tbody></samp><ul id="e4iaa"></ul>
      <ul id="e4iaa"></ul>
      <th id="e4iaa"><menu id="e4iaa"></menu></th>

      CEG5304代做、代寫Java/c++編程語(yǔ)言

      時(shí)間:2024-04-11  來(lái)源:  作者: 我要糾錯(cuò)



      Project #2 for CEG5304: Generating Images through Prompting and Diffusion-based Models.
      Spring (Semester 2), AY 2023-2024
      In this exploratory project, you are to explore how to generate (realistic) images via diffusion-based models (such as DALLE and Stable Diffusion) through prompting, in particular hard prompting. To recall and recap the concepts of prompting, prompt engineering, LLVM (Large Language Vision Models), and LMM (Large Multi-modal Models), please refer to the slides on Week 5 (“Lect5-DL_prompt.pdf”).
      Before beginning this project, please read the following instructions carefully, failure to comply with the instructions may be penalized:
      1.This project does not involve compulsory coding, complete your project with this given Word document file by filling in the “TO FILL” spaces. Save the completed file as a PDF file for submission. Please do NOT modify anything (including this instruction) in your submission file.
      2.The marking of this project is based on how detailed the description and discussion are over the given questions. To score, please make sure your descriptions and discussions are readable, and adequate visualizations are provided.
      3.The marking of this project is NOT based on any evaluation criteria (e.g., PSNR) over the generated image. Generating a good image does NOT guarantee a high score.
      4.You may use ChatGPT/Claude or any online LLM services for polishing. However, purely using these services for question answering is prohibited (and is actually very obvious). If it is suspected that you generate your answers holistically with these online services, your assignment may be considered as committing plagiarism.
      5.Submit your completed PDF on Canvas before the deadline: 1759 SGT on 20 April 2024 (updated from the slides). Please note that the deadlines are strict and late submission will be deducted 10 points (out of 100) for every 24 hours.
      6.The report must be done individually. You may discuss with your peers, but NO plagiarism is allowed. The University, College, Department, and the teaching team take plagiarism very seriously. An originality report may be generated from iThenticate when necessary. A zero mark will be given to anyone found plagiarizing and a formal report will be handed to the Department/College for further investigation.

      Task 1: generating an image with Stable Diffusion (via Huggingface Spaces) and compare it with the objective real image. (60%)
      In this task, you are to generate an image with the Stable Diffusion model in Huggingface Spaces. The link is provided here: CLICK ME. You can play with the different prompts and negative prompts (prompts that instructs the model NOT to generate something). Your objective is to generate an image that looks like the following image:

      1a) First, select a rather coarse text prompt. A coarse text prompt may not include a lot of details but should be a good starting prompt to generate images towards our objective. An example could be “A Singaporean university campus with a courtyard.”. Display your generated image and its corresponding text prompt (as well as the negative prompt, if applicable) below: (10%)
      TO FILL
      TO FILL
      1b) Describe, in detail, how the generated image is compared to the objective image. You may include the discussion such as the components in the objective image that is missing from the generated image, or anything generated that does not make sense in the real world. (20%)
      TO FILL
      TO FILL
      Next, you are to improve the generated image with prompt engineering. Note that it is highly likely that you may still be unable to obtain the objective image. A good reference material for prompt engineering can be found here: PROMPT ENGINEERING. 
      1c) Describe in detail how you improve your generated image. The description should include display of the generated images and their corresponding prompts, and detailed reasoning over the change in prompts. If the final improved image is generated with several iterations of prompt improvement, you should show each step in detail. I.e., you should display the result of each iteration of prompt change and discuss the result of each prompt change. You should also compare your improved image with both the first image you generated above, as well as the objective image. (30%)
      TO FILL
      TO FILL
      TO FILL
      Task 2: generating images with another diffusion-based model, DALL-E (mini-DALL-E, via Huggingface Spaces). (40%)
      Stable Diffusion is not the only diffusion-based model that has the capability to generate good quality images. DALL-E is an alternative to Stable Diffusion. However, we are not to discuss the differences over these two models technically, but the differences over the generated images qualitatively (in a subjective manner). The link to generating with mini-DALL-E is provided here: MINI-DALL-E.
      2a) You should first use the same prompt as you used in Task 1a and generate the image with mini-DALL-E. Display the generated image and compare, in detail, the new generated image with that generated by Stable Diffusion. (10%)
      TO FILL
      TO FILL
      2b) Similar to what we performed for Stable Diffusion; you are to again improve the generated image with prompt engineering. Describe in detail how you improve your generated image. Similarly, if the final improved image is generated with several iterations of prompt improvement, you should show each step in detail. The description should include display of the generated images and their corresponding prompts, and detailed reasoning over the change in prompts. You should compare your improved image with both the first image you generated above, as well as the objective image.
      In addition, you should also describe how the improvement is similar to or different from the previous improvement process with Stable Diffusion. (10%)
      TO FILL
      TO FILL
      2c) From the generation process in Task 1 and Task 2, discuss the capabilities and limitations over image generation with off-the-shelf diffusion-based models and prompt engineering. You could further elaborate on possible alternatives or improvements that could generate images that are more realistic or similar to the 請(qǐng)加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp











       

       

       

       

       

      標(biāo)簽:

      掃一掃在手機(jī)打開當(dāng)前頁(yè)
    • 上一篇:越南簽證辦理托運(yùn)流程多久(行李托運(yùn)政策)
    • 下一篇:怎么申請(qǐng)菲律賓移民達(dá)沃??jī)r(jià)格多少
    • 無(wú)相關(guān)信息
      昆明生活資訊

      昆明圖文信息
      蝴蝶泉(4A)-大理旅游
      蝴蝶泉(4A)-大理旅游
      油炸竹蟲
      油炸竹蟲
      酸筍煮魚(雞)
      酸筍煮魚(雞)
      竹筒飯
      竹筒飯
      香茅草烤魚
      香茅草烤魚
      檸檬烤魚
      檸檬烤魚
      昆明西山國(guó)家級(jí)風(fēng)景名勝區(qū)
      昆明西山國(guó)家級(jí)風(fēng)景名勝區(qū)
      昆明旅游索道攻略
      昆明旅游索道攻略
    • 高仿包包訂製

      關(guān)于我們 | 打賞支持 | 廣告服務(wù) | 聯(lián)系我們 | 網(wǎng)站地圖 | 免責(zé)聲明 | 幫助中心 | 友情鏈接 |

      Copyright © 2025 kmw.cc Inc. All Rights Reserved. 昆明網(wǎng) 版權(quán)所有
      ICP備06013414號(hào)-3 公安備 42010502001045

      主站蜘蛛池模板: 久久亚洲精品中文字幕无码| 色AV永久无码影院AV| 国产v亚洲v天堂无码网站| 内射人妻少妇无码一本一道| 国产成人精品无码免费看| 曰产无码久久久久久精品 | 精品欧洲av无码一区二区| 高清无码v视频日本www| 亚洲va无码专区国产乱码| 特级无码毛片免费视频| 99久久无码一区人妻a黑| 亚洲AV综合色区无码另类小说| 四虎国产精品永久在线无码| 色综合久久久久无码专区| 东京热无码一区二区三区av| 极品无码国模国产在线观看| 国产成人无码免费看视频软件| 亚洲av永久无码精品秋霞电影影院 | 久久无码AV中文出轨人妻| 无码中文在线二区免费| 少妇人妻无码精品视频| 亚洲va中文字幕无码久久不卡| 午夜精品久久久久久久无码| 无码人妻精品一区二区三区久久久 | 无码中文人妻视频2019| 国产成人无码一区二区在线观看| 无码国产69精品久久久久孕妇 | 久久国产精品无码网站| 国产精品国产免费无码专区不卡| 久久国产亚洲精品无码| 精品少妇无码AV无码专区| 久久久久久久亚洲Av无码| 无码av免费网站| 人妻无码αv中文字幕久久琪琪布| 国产无遮挡无码视频免费软件| 亚洲国产精品无码久久久蜜芽| 亚洲A∨无码无在线观看| 久久国产亚洲精品无码| 亚洲人成人伊人成综合网无码| 亚洲Av永久无码精品一区二区| 亚洲成a人无码亚洲成www牛牛|