狠狠综合久久久久综合网址-a毛片网站-欧美啊v在线观看-中文字幕久久熟女人妻av免费-无码av一区二区三区不卡-亚洲综合av色婷婷五月蜜臀-夜夜操天天摸-a级在线免费观看-三上悠亚91-国产丰满乱子伦无码专区-视频一区中文字幕-黑人大战欲求不满人妻-精品亚洲国产成人蜜臀av-男人你懂得-97超碰人人爽-五月丁香六月综合缴情在线

代寫COM6511、代做Python設(shè)計程序

時間:2024-04-30  來源:  作者: 我要糾錯



COM4511/COM6511 Speech Technology - Practical Exercise -
Keyword Search
Anton Ragni
Note that for any module assignment full marks will only be obtained for outstanding performance that
goes well beyond the questions asked. The marks allocated for each assignment are 20%. The marks will be
assigned according to the following general criteria. For every assignment handed in:
1. Fulfilling the basic requirements (5%)
Full marks will be given to fulfilling the work as described, in source code and results given.
2. Submitting high quality documentation (5%)
Full marks will be given to a write-up that is at the highest standard of technical writing and illustration.
3. Showing good reasoning (5%) Full marks will be given if the experiments and the outcomes are explained to the best standard.
4. Going beyond what was asked (5%)
Full marks will be given for interesting ideas on how to extend work that are well motivated and
described.
1 Background
The aim of this task is to build and investigate the simplest form of a keyword search (KWS) system allowing to find information
in large volumes of spoken data. Figure below shows an example of a typical KWS system which consists of an index and
a search module. The index provides a compact representation of spoken data. Given a set of keywords, the search module
Search Results
Index
Key− words
queries the index to retrieve all possible occurrences ranked according to likelihood. The quality of a KWS is assessed based
on how accurately it can retrieve all true occurrences of keywords.
A number of index representations have been proposed and examined for KWS. Most popular representations are derived
from the output of an automatic speech recognition (ASR) system. Various forms of output have been examined. These differ
in terms of the amount of information retained regarding the content of spoken data. The simplest form is the most likely word
sequence or 1-best. Additional information such as start and end times, and recognition confidence may also be provided for
each word. Given a collection of 1-best sequences, the following index can be constructed
w1 (f1,1, s1,1, e1,1) . . . (f1,n1 , s1,n1 , e1,n1 )
w2 (f1,1, s1,1, e1,1) . . . (f1,n1 , s1,n1 , e1,n1 )

wN (fN,1, sN,1, eN,1) . . . (fN,nN , sN,nN , eN,nN )
(1)
where wi is a word, ni is the number of times word wi occurs, fi,j is a file where word wi occurs for the j-th time, si,j and ei,j
is the start and end time. Searching such index for single word keywords can be as simple as finding the correct row (e.g. k)
and returning all possible tuples (fk,1, sk,1, ek,1), . . ., (fk,nk , sk,nk , ek,nk ).
The search module is expected to retrieve all possible keyword occurrences. If ASR makes no mistakes such module
can be created rather trivially. To account for possible retrieval errors, the search module provides each potential occurrence
with a relevance score. Relevance scores reflect confidence in a given occurrence being relevant. Occurrences with extremely
low relevance scores may be eliminated. If these scores are accurate each eliminated occurrence will decrease the number of
false alarms. If not then the number of misses will increase. What exactly an extremely low score is may not be very easy
to determine. Multiple factors may affect a relevance score: confidence score, duration, word confusability, word context,
keyword length. Therefore, simple relevance scores, such as those based on confidence scores, may have a wide dynamic range
and may be incomparable across different keywords. In order to ensure that relevance scores are comparable among different
keywords they need to be calibrated. A simple calibration scheme is called sum-to-one (STO) normalisation
(2)
where ri,j is an original relevance score for the j-th occurrence of the i-th keyword, γ is a scale enabling to either sharpen or
flatten the distribution of relevance scores. More complex schemes have also been examined. Given a set of occurrences with
associated relevance scores, there are several options available for eliminating spurious occurrences. One popular approach
is thresholding. Given a global or keyword specific threshold any occurrence falling under is eliminated. Simple calibration
schemes such as STO require thresholds to be estimated on a development set and adjusted to different collection sizes. More
complex approaches such as Keyword Specific Thresholding (KST) yield a fixed threshold across different keywords and
collection sizes.
Accuracy of KWS systems can be assessed in multiple ways. Standard approaches include precision (proportion of relevant retrieved occurrences among all retrieved occurrences) and recall (proportion of relevant retrieved occurrences among all
relevant occurrences), mean average precision and term weighted value. A collection of precision and recall values computed
for different thresholds yields a precision-recall (PR) curve. The area under PR curve (AUC) provides a threshold independent summative statistics for comparing different retrieval approaches. The mean average precision (mAP) is another popular,
threshold-independent, precision based metric. Consider a KWS system returning 3 correct and 4 incorrect occurrences arranged according to relevance score as follows: ✓ , ✗ , ✗ , ✓ , ✓ , ✗ , ✗ , where ✓ stands for correct occurrence and ✗ stands
for incorrect occurrence. The average precision at each rank (from 1 to 7) is 1

7 . If the number of true correct
occurrences is 3, the mean average precision for this keyword 0.7. A collection-level mAP can be computed by averaging
keyword specific mAPs. Once a KWS system operates at a reasonable AUC or mAP level it is possible to use term weighted
value (TWV) to assess accuracy of thresholding. The TWV is defined by
 
(3)
where k ∈ K is a keyword, Pmiss and Pfa are probabilities of miss and false alarm, β is a penalty assigned to false alarms.
These probabilities can be computed by
Pmiss(k, θ) = Nmiss(k, θ)
Ncorrect(k) (4)
Pfa(k, θ) = Nfa(k, θ)
Ntrial(k) (5)
where N<event> is a number of events. The number of trials is given by
Ntrial(k) = T − Ncorrect(k) (6)
where T is the duration of speech in seconds.
2 Objective
Given a collection of 1-bests, write a code that retrieves all possible occurrences of keyword list provided. Describe the search
process including index format, handling of multi-word keywords, criterion for matching, relevance score calibration and
threshold setting methodology. Write a code to assess retrieval performance using reference transcriptions according to AUC,
mAP and TWV criteria using β = 20. Comment on the difference between these criteria including the impact of parameter β.
Start and end times of hypothesised occurrences must be within 0.5 seconds of true occurrences to be considered for matching.
2
3 Marking scheme
Two critical elements are assessed: retrieval (65%) and assessment (35%). Note: Even if you cannot complete this task as a
whole you can certainly provide a description of what you were planning to accomplish.
1. Retrieval
1.1 Index Write a code that can take provided CTM files (and any other file you deem relevant) and create indices in
your own format. For example, if Python language is used then the execution of your code may look like
python index.py dev.ctm dev.index
where dev.ctm is an CTM file and dev.index is an index.
Marks are distributed based on handling of multi-word keywords
• Efficient handling of single-word keywords
• No ability to handle multi-word keywords
• Inefficient ability to handle multi-word keywords
• Or efficient ability to handle multi-word keywords
1.2 Search Write a code that can take the provided keyword file and index file (and any other file you deem relevant)
and produce a list of occurrences for each provided keyword. For example, if Python language is used then the
execution of your code may look like
python search.py dev.index keywords dev.occ
where dev.index is an index, keywords is a list of keywords, dev.occ is a list of occurrences for each
keyword.
Marks are distributed based on handling of multi-word keywords
• Efficient handling of single-word keywords
• No ability to handle multi-word keywords
• Inefficient ability to handle multi-word keywords
• Or efficient ability to handle multi-word keywords
1.3 Description Provide a technical description of the following elements
• Index file format
• Handling multi-word keywords
• Criterion for matching keywords to possible occurrences
• Search process
• Score calibration
• Threshold setting
2. Assessment Write a code that can take the provided keyword file, the list of found keyword occurrences and the corresponding reference transcript file in STM format and compute the metrics described in the Background section. For
instance, if Python language is used then the execution of your code may look like
python <metric>.py keywords dev.occ dev.stm
where <metric> is one of precision-recall, mAP and TWV, keywords is the provided keyword file, dev.occ is the
list of found keyword occurrences and dev.stm is the reference transcript file.
Hint: In order to simplify assessment consider converting reference transcript from STM file format to CTM file format.
Using indexing and search code above obtain a list of true occurrences. The list of found keyword occurrences then can
be assessed more easily by comparing it with the list of true occurrences rather than the reference transcript file in STM
file format.
2.1 Implementation
• AUC Integrate an existing implementation of AUC computation into your code. For example, for Python
language such implementation is available in sklearn package.
• mAP Write your own implementation or integrate any freely available.
3
• TWV Write your own implementation or integrate any freely available.
2.2 Description
• AUC Plot precision-recall curve. Report AUC value . Discuss performance in the high precision and low
recall area. Discuss performance in the high recall and low precision area. Suggest which keyword search
applications might be interested in a good performance specifically in those two areas (either high precision
and low recall, or high recall and low precision).
• mAP Report mAP value. Report mAP value for each keyword length (1-word, 2-words, etc.). Compare and
discuss differences in mAP values.
• TWV Report TWV value. Report TWV value for each keyword length (1-word, 2-word, etc.). Compare and
discuss differences in TWV values. Plot TWV values for a range of threshold values. Report maximum TWV
value or MTWV. Report actual TWV value or ATWV obtained with a method used for threshold selection.
• Comparison Describe the use of AUC, mAP and TWV in the development of your KWS approach. Compare
these metrics and discuss their advantages and disadvantages.
4 Hand-in procedure
All outcomes, however complete, are to be submitted jointly in a form of a package file (zip/tar/gzip) that includes
directories for each task which contain the associated required files. Submission will be performed via MOLE.
5 Resources
Three resources are provided for this task:
• 1-best transcripts in NIST CTM file format (dev.ctm,eval.ctm). The CTM file format consists of multiple records
of the following form
<F> <H> <T> <D> <W> <C>
where <F> is an audio file name, <H> is a channel, <T> is a start time in seconds, <D> is a duration in seconds, <W> is a
word, <C> is a confidence score. Each record corresponds to one recognised word. Any blank lines or lines starting with
;; are ignored. An excerpt from a CTM file is shown below
7654 A 11.34 0.2 YES 0.5
7654 A 12.00 0.34 YOU 0.7
7654 A 13.30 0.5 CAN 0.1
• Reference transcript in NIST STM file format (dev.stm, eval.stm). The STM file format consists of multiple records
of the following form
<F> <H> <S> <T> <E> <L> <W>...<W>
where <S> is a speaker, <E> is an end time, <L> topic, <W>...<W> is a word sequence. Each record corresponds to
one manually transcribed segment of audio file. An excerpt from a STM file is shown below
2345 A 2345-a 0.10 2.03 <soap> uh huh yes i thought
2345 A 2345-b 2.10 3.04 <soap> dog walking is a very
2345 A 2345-a 3.50 4.59 <soap> yes but it’s worth it
Note that exact start and end times for each word are not available. Use uniform segmentation as an approximation. The
duration of speech in dev.stm and eval.stm is estimated to be 57474.2 and 25694.3 seconds.
• Keyword list keywords. Each keyword contains one or more words as shown below
請加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
  • 上一篇:ACS341代做、代寫MATLAB設(shè)計程序
  • 下一篇:COMP 315代做、代寫Java/c++編程語言
  • 無相關(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
    昆明西山國家級風(fēng)景名勝區(qū)
    昆明西山國家級風(fēng)景名勝區(qū)
    昆明旅游索道攻略
    昆明旅游索道攻略
  • NBA直播 短信驗證碼平臺 幣安官網(wǎng)下載 歐冠直播 WPS下載

    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-3 公安備 42010502001045

    狠狠综合久久久久综合网址-a毛片网站-欧美啊v在线观看-中文字幕久久熟女人妻av免费-无码av一区二区三区不卡-亚洲综合av色婷婷五月蜜臀-夜夜操天天摸-a级在线免费观看-三上悠亚91-国产丰满乱子伦无码专区-视频一区中文字幕-黑人大战欲求不满人妻-精品亚洲国产成人蜜臀av-男人你懂得-97超碰人人爽-五月丁香六月综合缴情在线
  • <dl id="akume"></dl>
  • <noscript id="akume"><object id="akume"></object></noscript>
  • <nav id="akume"><dl id="akume"></dl></nav>
  • <rt id="akume"></rt>
    <dl id="akume"><acronym id="akume"></acronym></dl><dl id="akume"><xmp id="akume"></xmp></dl>
    国产精品动漫网站| 无遮挡又爽又刺激的视频| 国产日韩第一页| 久久免费一级片| 欧美无砖专区免费| www.av中文字幕| 超碰影院在线观看| 91女神在线观看| 日日鲁鲁鲁夜夜爽爽狠狠视频97| 国产乱叫456| 黄色一级大片免费| wwwwxxxx日韩| 黄色三级中文字幕| 少妇一级淫免费播放| 久久九九国产视频| 在线观看日本一区二区| 日本大片免费看| 99中文字幕在线| 色综合av综合无码综合网站| 四季av一区二区| 五月激情婷婷在线| 精品无码av无码免费专区| 91日韩精品视频| 亚洲欧美手机在线| 日韩精品一区二区三区电影| 日本福利视频导航| 一级黄色片国产| 天天插天天操天天射| 日韩在线视频在线| 欧美交换配乱吟粗大25p| 日韩无套无码精品| www.爱色av.com| 国内少妇毛片视频| 小说区视频区图片区| www.69av| 免费在线精品视频| 无码精品a∨在线观看中文| 亚洲这里只有精品| 久久亚洲精品无码va白人极品| 午夜免费精品视频| 精品无码一区二区三区在线| 在线免费看v片| 亚洲少妇第一页| 国产日韩一区二区在线| 欧美日韩dvd| 一级网站在线观看| 超碰超碰在线观看| 久色视频在线播放| 国产黄色激情视频| 亚洲精品久久久中文字幕| 播放灌醉水嫩大学生国内精品| 日韩精品一区二区三区电影| 欧美精品 - 色网| 日韩欧美国产片| 18岁视频在线观看| 成年人免费在线播放| 野外做受又硬又粗又大视频√| 成人手机视频在线| 国产日产欧美一区二区| 手机看片日韩国产| 超碰在线免费观看97| 亚洲a级黄色片| 四虎永久在线精品无码视频| 日本精品一区二区三区四区| 免费在线看黄色片| 日韩欧美一区三区| 国产 日韩 亚洲 欧美| 免费看国产一级片| 少妇高潮毛片色欲ava片| 人妻有码中文字幕| 欧美激情成人网| www.色偷偷.com| 精品亚洲视频在线| 一本色道久久88亚洲精品综合 | 男人添女人下面高潮视频| 99热一区二区三区| 69sex久久精品国产麻豆| 99热这里只有精品免费| 亚洲 欧美 综合 另类 中字| 波多野结衣之无限发射| 国产美女三级视频| 在线不卡一区二区三区| 99精品视频国产| 日韩精品免费一区| 人妻内射一区二区在线视频| 一女二男3p波多野结衣| 男女爱爱视频网站| 大西瓜av在线| 色免费在线视频| 九一免费在线观看| 国产综合免费视频| 中文字幕av专区| 97在线免费视频观看| 成熟老妇女视频| 免费一区二区三区在线观看| 欧美国产视频一区| 国产精品igao| 福利在线小视频| 美女网站免费观看视频 | 国产精品秘入口18禁麻豆免会员| 99免费视频观看| 男同互操gay射视频在线看| 日韩小视频在线播放| 在线免费看污网站| 精品这里只有精品| 91香蕉视频免费看| 国产裸体舞一区二区三区| 国产美女视频免费看| 激情五月宗合网| 波多野结衣在线免费观看| www..com日韩| 成人在线观看毛片| 污视频免费在线观看网站| 91九色丨porny丨国产jk| jizzzz日本| 欧美亚洲一二三区| 777久久精品一区二区三区无码| 美女网站色免费| 92看片淫黄大片一级| 无码熟妇人妻av在线电影| 在线观看中文av| 欧洲av无码放荡人妇网站| 青青草视频国产| 五月天色婷婷综合| 日韩av一卡二卡三卡| 99久久久精品视频| 亚洲欧美日韩不卡| 57pao国产成永久免费视频| 欧美成人黑人猛交| 99色精品视频| 毛片在线视频播放| 国产精品网站免费| 日本a视频在线观看| 国产91沈先生在线播放| 久久久久亚洲av无码专区喷水| www.桃色.com| 久久久久久综合网| 九九热99视频| 中日韩av在线播放| 天天干天天操天天玩| 91女神在线观看| 国产精品区在线| www.色.com| 亚洲欧美一二三| 无限资源日本好片| 日韩av片在线看| 国产三级日本三级在线播放 | 高潮一区二区三区| 亚洲一二三av| www.-级毛片线天内射视视| 日本福利视频导航| 亚洲色婷婷久久精品av蜜桃| 潘金莲一级淫片aaaaa免费看| 国产高清精品软男同| 日韩极品视频在线观看 | 久久美女福利视频| 欧美日韩亚洲第一| 久久久久久久久久久久91| 天天综合天天添夜夜添狠狠添| 小明看看成人免费视频| 亚洲精品mv在线观看| 欧美高清中文字幕| 国产一级不卡毛片| 亚洲综合激情五月| 国产高清av在线播放| 乌克兰美女av| 天天在线免费视频| 国产无套内射久久久国产| 毛葺葺老太做受视频| 午夜一级免费视频| 国产女教师bbwbbwbbw| 国产成人永久免费视频| 精品少妇无遮挡毛片| 中文字幕免费高| 久久在线中文字幕| 成年人免费观看的视频| 国产理论在线播放| 色综合五月婷婷| 国产a级一级片| 天堂av8在线| 国产福利视频在线播放| 三年中国中文在线观看免费播放| 久青草视频在线播放| 精品综合久久久久| www.av蜜桃| 国产四区在线观看| 日本成人黄色网| 日韩免费在线观看av| 日韩欧美在线免费观看视频| 国产女主播av| 在线观看国产一级片| a√天堂在线观看| 在线观看污视频| 午夜激情视频网| 2022亚洲天堂| 国产av人人夜夜澡人人爽麻豆| 9999在线观看| 久久精品网站视频| 91九色在线观看视频| 国产一二三四区在线观看|