Тёмный
No video :(

What Are Wavelets | Understanding Wavelets, Part 1 

MATLAB
Подписаться 521 тыс.
Просмотров 466 тыс.
50% 1

This introductory video covers what wavelets are and how you can use them to explore your data in MATLAB®. Learn two important wavelet transform concepts: scaling and shifting. These concepts can be applied to 2D data such as images.
•Try Wavelet Toolbox: goo.gl/m0ms9d
•Ready to Buy: goo.gl/sMfoDr
Video Transcript:
Hello, everyone. In this introductory session, I will cover some basic wavelet concepts. I will be primarily using a 1-D example, but the same concepts can be applied to images, as well. First, let's review what a wavelet is. Real world data or signals frequently exhibit slowly changing trends or oscillations punctuated with transients. On the other hand, images have smooth regions interrupted by edges or abrupt changes in contrast. These abrupt changes are often the most interesting parts of the data, both perceptually and in terms of the information they provide. The Fourier transform is a powerful tool for data analysis. However, it does not represent abrupt changes efficiently.
The reason for this is that the Fourier transform represents data as sum of sine waves, which are not localized in time or space. These sine waves oscillate forever. Therefore, to accurately analyze signals and images that have abrupt changes, we need to use a new class of functions that are well localized in time and frequency: This brings us to the topic of Wavelets. A wavelet is a rapidly decaying, wave-like oscillation that has zero mean. Unlike sinusoids, which extend to infinity, a wavelet exists for a finite duration. Wavelets come in different sizes and shapes. Here are some of the well-known ones. The availability of a wide range of wavelets is a key strength of wavelet analysis.
To choose the right wavelet, you'll need to consider the application you'll use it for. We will discuss this in more detail in a subsequent session. For now, let's focus on two important wavelet transform concepts: scaling and shifting. Let' start with scaling. Say you have a signal PSI(t). Scaling refers to the process of stretching or shrinking the signal in time, which can be expressed using this equation [on screen]. S is the scaling factor, which is a positive value and corresponds to how much a signal is scaled in time. The scale factor is inversely proportional to frequency. For example, scaling a sine wave by 2 results in reducing its original frequency by half or by an octave. For a wavelet, there is a reciprocal relationship between scale and frequency with a constant of proportionality. This constant of proportionality is called the "center frequency" of the wavelet. This is because, unlike the sinewave, the wavelet has a band pass characteristic in the frequency domain. Mathematically, the equivalent frequency is defined using this equation [on screen], where Cf is center frequency of the wavelet, s is the wavelet scale, and delta t is the sampling interval. Therefore when you scale a wavelet by a factor of 2, it results in reducing the equivalent frequency by an octave.
For instance, here is how a sym4 wavelet with center frequency 0.71 Hz corresponds to a sine wave of same frequency. A larger scale factor results in a stretched wavelet, which corresponds to a lower frequency. A smaller scale factor results in a shrunken wavelet, which corresponds to a high frequency. A stretched wavelet helps in capturing the slowly varying changes in a signal while a compressed wavelet helps in capturing abrupt changes.
You can construct different scales that inversely correspond the equivalent frequencies, as mentioned earlier. Next, we'll discuss shifting. Shifting a wavelet simply means delaying or advancing the onset of the wavelet along the length of the signal. A shifted wavelet represented using this notation [on screen] means that the wavelet is shifted and centered at k. We need to shift the wavelet to align with the feature we are looking for in a signal.The two major transforms in wavelet analysis are Continuous and Discrete Wavelet Transforms. These transforms differ based on how the wavelets are scaled and shifted. More on this in the next session. But for now, you've got the basic concepts behind wavelets.

Опубликовано:

 

22 авг 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 92   
@yliapis44
@yliapis44 7 лет назад
Probably the best short and concise explanation of wavelets I have seen, well done
@senthil2sg
@senthil2sg 7 лет назад
A lot of thinking and care has gone into the making of this wavelet video series, and it shows. The explanations are clear and to the point. thanks for the post @Kirti Devleker
@DRibic
@DRibic 3 года назад
The best explanation ever... Really professional video. Lecturer doesn't appear professor-like, but give this guy just one minute, and you will see he is the best professor ever. I watched following videos as well. This saves time. In 4 minutes you learn more than reading the same thing in book for 40 minutes, or watching lesser quality video for 20 mins.
@177raluka
@177raluka Год назад
Extraordinary! Great respect (university teacher here). I have a lot to learn from your teaching tehniques!
@cxrrt
@cxrrt 2 года назад
Clear, concise, and straight-forward. Thank you.
@lalitsharmaku
@lalitsharmaku 7 лет назад
All set in less than 5 min, very well explained.
@AmitrajitMukherjee
@AmitrajitMukherjee 4 года назад
This is a very helpful overview for every researcher working on the data analysis. Thank you for this session..
@JanezKrnc-San
@JanezKrnc-San 7 лет назад
Really professional, clear and informative. Thank you !
@aswathycomm4852
@aswathycomm4852 2 месяца назад
CLEARLY UNDERSTOOD SIR. THANK U SO MUCH
@davidjames1684
@davidjames1684 3 года назад
This is how to properly teach an advanced topic. Start with the very basics. Very well done sir. Upvoted.
@benoitmorel3371
@benoitmorel3371 2 года назад
Never saw such a clever way to describe wavelengths. E Well done!
@sivakandanmani7510
@sivakandanmani7510 9 месяцев назад
Very precise and well explained. Thank you.
@Deepsim
@Deepsim 2 года назад
You explain the concept well clearly.
@bhaskartripathi
@bhaskartripathi 7 лет назад
So Precise yet so clear sir. Thanks !
@mutantengineer9229
@mutantengineer9229 2 года назад
This guy is REALLY good!
@rameshnaidu5007
@rameshnaidu5007 6 лет назад
The best introductory video to wavelets.! Thank you very much.
@AlexTrusk91
@AlexTrusk91 4 года назад
Thanks, exactly what I needed for my artificial vowel project
@felixsamuelfs
@felixsamuelfs 4 года назад
fun pp (-':
@Truthonlyify
@Truthonlyify 4 года назад
Concise explanation of Wavelet. Good effort.
@sheilaserrano1039
@sheilaserrano1039 4 года назад
Great, simple and concise!
@KoLMiW
@KoLMiW 2 года назад
bless your soul
@Alpha1200
@Alpha1200 4 года назад
You explained it way better than my teacher.
@Khwartz
@Khwartz 5 лет назад
02:39 - Sorry, shouldn't the graphics of the frequency be shift between up and bottom?
@dylanschellenberg8617
@dylanschellenberg8617 4 года назад
OMG best wavelet explanation... bae .... 😍 😍 😍 😍
@vanessachristyraja9268
@vanessachristyraja9268 4 года назад
Thank you for your explanation
@benjameslari
@benjameslari 4 года назад
Very well explained!
@nsakhalkar746
@nsakhalkar746 7 лет назад
really easy and precise explaination. thank you.
@ouraniand
@ouraniand 7 лет назад
Thank you very concise . Helped a lot
@kikicrwban
@kikicrwban 7 лет назад
Great introduction! Thank you!
@vamsikrishna1204
@vamsikrishna1204 5 лет назад
Ultimate & Excellent presentation on...introduction to the Wavelets..Thank you..Sir
@andrestation6754
@andrestation6754 4 года назад
Nice job, thanks for this explanation!
@luisantoniobautistahernand1329
@luisantoniobautistahernand1329 4 года назад
Excelent video. congratulations
@poonammantry6958
@poonammantry6958 4 года назад
Nicely explained 👍
@shreyaanbajpai2641
@shreyaanbajpai2641 2 года назад
Thank you very much
@tomasbjornfot2818
@tomasbjornfot2818 4 года назад
Very good explination
@bhavikbolya3737
@bhavikbolya3737 3 года назад
how high are you???? Great video for post weed high!!!
@sharvilpk2030
@sharvilpk2030 3 года назад
Don't like your own comments. 420
@ushadiggi6524
@ushadiggi6524 6 лет назад
Great Explanation..Thank you....!!!
@Momonosuke321
@Momonosuke321 6 лет назад
Thank you! great introduction
@kabonline09
@kabonline09 4 года назад
very good ..gettig interested
@abidsyed9534
@abidsyed9534 6 лет назад
Great sir, very nice and simple explanation
@Ladynatalie33
@Ladynatalie33 4 года назад
Great! Thank you so much.
@eiliannoyes5212
@eiliannoyes5212 6 лет назад
Fantastic! :) Many thanks!
@mk-qk9wy
@mk-qk9wy 7 лет назад
very good.I enjoyed
@anandkrishnan1996
@anandkrishnan1996 7 лет назад
whiich will be good for emg signals either fourier r wavelet transforms
@sanjaykrish8719
@sanjaykrish8719 7 лет назад
Great intro.. Thank you.. Can i know what tool did you use for the animation?
@claudiodipietro9489
@claudiodipietro9489 5 лет назад
Vevvlets ! thanks mate !
@Khwartz
@Khwartz 6 лет назад
Hello. Very Well Donne for the Clarity and Simplicity of your lesson! (y) (y) (y)
@XxbossdogxX
@XxbossdogxX 5 лет назад
What prerequisite knowledge do i need to understand this? I don't really know what you're talking about, but I want to know... edit: To clarify, what math concept(s) do I need to learn first? What discipline(s) of math? I've completed basic calculus so far.
@aldosalthren
@aldosalthren 5 лет назад
This uses a lot of stuff I learned in my signals & systems course (specifically taking a real time signal and putting it in frequency domain with fourier, and function manipulation)
@chrispapad1021
@chrispapad1021 4 года назад
Amazing!!!
@vinaykumartheyoutuber5386
@vinaykumartheyoutuber5386 2 года назад
Sir I have a doubt . If a wavelet transform is continues means are we perform transformation on continuous time signal or if a wavelet transform is DWT is it means we are performing wavelet transform on Discrete time signals . Please clarify my doubts.
@JyotiGupta-gi5ex
@JyotiGupta-gi5ex 5 лет назад
What is best between filters and wavelets for denoising
@vineetverma6645
@vineetverma6645 5 лет назад
So wavelets help get the localization aspect into creating a given signal.
@dwyerfire
@dwyerfire 3 года назад
Also why at 3:00 are we dividing by the sampling interval?
@nackyding
@nackyding 7 лет назад
Thank you.
@dwyerfire
@dwyerfire 3 года назад
Why is the equation Ψ(x/s)s=y? This seems to imply that the wavelet is made taller vertically when it is squished together horizontally. Yet your animation doesn't show this happening... Am I missing something? Why isn't it Ψ(x/s)=y?
@rodrigopinto27
@rodrigopinto27 5 лет назад
amazing
@Abou47Pandas
@Abou47Pandas 5 лет назад
If the public actually cared about Wavelets, they would be outraged that there is a wavelet called the "Mexican Hat". Actually funny.
@blablabla12a
@blablabla12a 4 года назад
We live in a truly cucked society
@pmcate2
@pmcate2 4 года назад
I don't understand how wavelets circumvent the problem arising from the sine waves oscillating for infinite time and space. Aren't those wavelets composed of infinite sine waves?
@prachiingale3636
@prachiingale3636 6 лет назад
Can u tell me exactly wavelet filter. Video was very nice
@bandiashok8445
@bandiashok8445 6 лет назад
From that time -scale representation how we will obtain the frequency of our given signal??
@maniashouri3866
@maniashouri3866 7 лет назад
Hi, I have a question about wavelets: I want to analyse power system fault currents with wavelet. when I use 1-d wavelet toolbox, d1 to d5 coefficients are in the same time scale and I can for example find the value of each coefficient in a specific milisecond like 2.05. but when I use "wavedec and detcoef" in my mfiles, the d1 to d5 coefficients are not in the same x axis time scale. for example if my wave exported from PSCAD be a matrix of 1000 samples, d5 will be 500 samples, to d1 will be 20 samples for example. and they cannot be synced plotting together finding all coefficients in a certtain x axis like time, which is being plotted automatically in 1-d dwt toolbox. so whats wrong with my understanding or using of wavelets? thanks
@simonbernard4216
@simonbernard4216 5 лет назад
OMG I want that swaggy MathWorks shirt sooo baaad
@ignmario
@ignmario 7 лет назад
how to define j for scaling?
@blenderm4n
@blenderm4n 7 лет назад
Dumb question here - what does ψ mean in 2:15 ?
@EneaColombo
@EneaColombo 6 лет назад
Stuntkoala it's just a letter wich represents the signal. like the letter f stands for function in analysis.
@MylordVlog
@MylordVlog 4 года назад
How to get elliot wave automated software plz suggest anyone
@anandtiwari2906
@anandtiwari2906 5 лет назад
Good morning sir, i wnat to pdf formate of wavelet transform and wavelet cosine transform and its application . please provide me because my exam is near.
@vigneshsanjeevi3530
@vigneshsanjeevi3530 6 лет назад
Please Explain contourlet wavelet Transform
@eileenzhang8112
@eileenzhang8112 7 лет назад
几乎每句话都值得记笔记,讲的很好,可是没有人觉得他口音太太太重了吗,好多单词听了几十遍也听不懂 是我英语太差了?。。。
@juniorhernandez3014
@juniorhernandez3014 6 лет назад
有字幕
@dukhuhembram9737
@dukhuhembram9737 3 года назад
Can we have a wavelet of single frequency!!??
@rajdeepsingh1662
@rajdeepsingh1662 6 лет назад
At this time their subs and view of this video are equal
@skipperinoagadmatorino5788
@skipperinoagadmatorino5788 2 года назад
I love India
@robertlake2753
@robertlake2753 6 лет назад
Hey could you try this software? Encounter: 'Circuit Solver' by Phasor Systems on Google Play.
@mateodalmolin4865
@mateodalmolin4865 2 года назад
I love my dear friend
@math_engine_pro5082
@math_engine_pro5082 Год назад
are you an Indi?
@Indian_history_and_Traditions
@Indian_history_and_Traditions 6 лет назад
Nice presentation! But the person, why so serious :/ :P
@knowledgegatherer142
@knowledgegatherer142 4 года назад
vavelets
@BohdanTrotsenko
@BohdanTrotsenko 4 года назад
There's something better for signal analysis. (Disclaimer: I have invented one).
@riskyrisk663
@riskyrisk663 4 года назад
So what's the better method? Post a link or something to your work ...
@BohdanTrotsenko
@BohdanTrotsenko 4 года назад
@@riskyrisk663 thanks. I have a number of demo videos right on my channel; more on trotsenko.com.ua I currently demo it talk about it, but not disclose it yet.
@arpithaachaiah7155
@arpithaachaiah7155 6 лет назад
Your explanation is too fast
@mssgsai
@mssgsai 7 лет назад
complete bullshit HE IS LOOKING LIKE A ZOMBIE
Далее
Wavelets: a mathematical microscope
34:29
Просмотров 622 тыс.
When I met the most famous Cristiano
01:03
Просмотров 25 млн
Time and frequency domains
9:43
Просмотров 95 тыс.
The Wavelet Transform for Beginners
14:14
Просмотров 162 тыс.
Wavelets-based Feature Extraction
37:40
Просмотров 60 тыс.
Wavelets and Multiresolution Analysis
15:12
Просмотров 138 тыс.
Understanding Vibration and Resonance
19:42
Просмотров 1,2 млн