Time and frequency domains

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  • čas přidán 18. 12. 2019
  • This video lesson is part of a complete course on neuroscience time series analyses.
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Komentáře • 137

  • @bulbulroyagarwal9647
    @bulbulroyagarwal9647 Před 3 lety +80

    The search ends.. Finally an Excellent explanation of the concept with total clarity. Thanks a lot!

    • @mikexcohen1
      @mikexcohen1  Před 3 lety +15

      And now my search for the best CZcams comment has ended! We may both go in peace ;)

    • @MeistroJB
      @MeistroJB Před 3 lety

      I sure hope so. Shouldn't take me that many more decades.... Omg! seven minutes in, it's true! Can't thank you enough.

    • @userhdza2248
      @userhdza2248 Před 2 lety

      i can confirm that
      i was looking for so long to know the use of spectrum untill setteled here

    • @OmniTraders
      @OmniTraders Před 2 lety

      What will this help exactly

    • @tidytelz
      @tidytelz Před rokem

      It is actually the best explanation I have seen so far.

  • @electric_sand
    @electric_sand Před 8 měsíci +7

    Clear voice, clear images, clearly explained. Thank you.

  • @TravisTerrell
    @TravisTerrell Před 3 lety +14

    This is so clearly explained! Thank you!

  • @denisjoly4300
    @denisjoly4300 Před 4 lety +18

    Thanks for the clarity of your explanations! I have to agree with other comments : you give the best lectures on signal analysis I've seen so far!

  • @hishamtariq7054
    @hishamtariq7054 Před rokem +2

    Thank you very much for providing a concise and informative explanation.

  • @mvelisompukuzela9034
    @mvelisompukuzela9034 Před rokem +2

    You really made this easy, thank you. I was struggling with understanding these two domains but now the light is there.

    • @mikexcohen1
      @mikexcohen1  Před rokem

      Thank you kindly, Mveliso. I'm glad you found it useful.

  • @gregoryacacia8087
    @gregoryacacia8087 Před 6 měsíci +1

    Thank you so much that was so clear !! We have hours of courses in university and still understand nothing, but here with a 10 min videos everything is cristal clear !! Wonderful job

  • @bhupiistersingh4097
    @bhupiistersingh4097 Před 3 lety +1

    Great way to explain both the domains.

  • @Yalsha
    @Yalsha Před 4 lety +9

    You are one of the best in the CZcams to explaining frequency. thank you for your effort

  • @imaginer04
    @imaginer04 Před 3 lety

    A nice explanation with most clear concept.

  • @roymccormick5328
    @roymccormick5328 Před rokem +3

    Thank you very much for this extremely clear and helpful series of over 17 videos explaining the Fourier Transform from basic concepts. so super cool 😎

  • @jsmithtraveller
    @jsmithtraveller Před rokem +1

    Thank you. I hope that conveys how much I appreciate you tutorials.

    • @mikexcohen1
      @mikexcohen1  Před rokem

      Thanks! I'm glad you've found them useful.

  • @joseph13058
    @joseph13058 Před rokem

    The best explaination I've seen of this so far.

  • @bugraaksu1252
    @bugraaksu1252 Před 3 lety

    Wonderful explanation, brief, clear and simple. Lot of thankss..

  • @bonjour5651
    @bonjour5651 Před 3 měsíci

    Thank you so much!! I was trying to find a source to understand the difference clearly. You are awesome! I appreciate.

  • @hparvizi
    @hparvizi Před 2 lety

    FINALLY UNDERSTOOD this basic concepts. well done. thank you

  • @lohithh9253
    @lohithh9253 Před 2 lety

    Wow..... What an explanation that is. Clear. Thanks a lot.

  • @jasonstarr2036
    @jasonstarr2036 Před 2 lety

    Finally, a very clear explanation! Thank you for posting!

  • @ginmarx6104
    @ginmarx6104 Před rokem

    thank you ! easy to understand and visually striking !

  • @sourabhkay
    @sourabhkay Před 2 lety +1

    Give this guy a medal!

  • @tubarekolah1786
    @tubarekolah1786 Před 3 lety +3

    Finally, I can stop my search on this topic bcos I've got it

  • @arshadhussain734
    @arshadhussain734 Před 3 lety

    Crystal clear explanation! Thank you

  • @user-hg1mn3qo8x
    @user-hg1mn3qo8x Před 11 měsíci

    Sir you are born to be a teacher ! I have follow your courses in Udemy and they are wonderfull too!

    • @mikexcohen1
      @mikexcohen1  Před 11 měsíci

      Thank you kindly, user-hg1mn3qo8x.

  • @frinikarayanidis4
    @frinikarayanidis4 Před 4 lety

    Fantastic resources, thanks Mike!

  • @yssjc1414
    @yssjc1414 Před 3 lety

    Very well explained!

  • @jurikang6731
    @jurikang6731 Před 5 měsíci +1

    I finally understand why FT is used!! Was really lost in my digital image processing course for a while. Thank you for such a spectacular explanation, you're amazing!

  • @unknownworld177
    @unknownworld177 Před 3 lety +1

    Thank you, you are great on this subjects. keep educating us

  • @wasilwestside
    @wasilwestside Před rokem

    Hi Mike,
    I hope you are well.
    Absolutely beautiful way to explain the process, very impressive.
    Keep up the good work

  • @Mulkek
    @Mulkek Před 3 lety +1

    Thanks, and it's so easy & simple!

  • @knightx9405
    @knightx9405 Před rokem

    i gotta tell you for doing this video that, you are the definition of "Inner peace", at this moment :)

    • @mikexcohen1
      @mikexcohen1  Před rokem

      If you can't fall asleep at night, try playing this video :P

  • @johnrogers1251
    @johnrogers1251 Před 2 lety

    In under ten minutes, along with clear pictures and verbal descriptions, you have removed the mystery (to me) of understanding the how/why/what-is-it-useful-for of Fourier transforms. I also appreciated that on the last slide, you explained the three things a student must be familiar with to do Fourier analysis (sine wave, complex numbers, dot product), and showed how the three things are combined to reach the end goal of Fourier coefficients. Thank you, and I look forward to watching your videos as I self-educate!

    • @mikexcohen1
      @mikexcohen1  Před 2 lety +1

      Awesome, thanks John :) I hope you find the rest of my videos just as useful!

    • @johnrogers1251
      @johnrogers1251 Před 2 lety

      @@mikexcohen1 I bought your course on Udemy, so I will give an assesment on the usefulness/understandability throughout the course. Overall, my goal in taking the course is to gain a better appreciation for signal processing.

  • @husseinalsajer4381
    @husseinalsajer4381 Před 3 lety

    nice !
    please , if I want to create image from sampled signal ( sine wave for example ), how can get this please
    the image like white line and black line

  • @Ranjit4uy2k
    @Ranjit4uy2k Před 3 lety

    One More Question--
    I am in a way to convert a random road load data to PSD graph for FEA simulation.
    Could you help me understand the physics involved to simplify the data in frequency domain.
    Also need to understand the role of Gaussian or PDF in the algorithm!

  • @dakynshew4163
    @dakynshew4163 Před 4 lety +1

    you r one of the top teacher ive met,now frequency domain is sooo clear ..iv searrch for many youtuber to make me understand it n i found none but only u sir.......people should watch your videos to clear thei concept......you r the first youtuber where i memories the channel name.......keep it up sir

    • @mikexcohen1
      @mikexcohen1  Před 4 lety

      Happy to help!

    • @razor1887
      @razor1887 Před 4 lety

      I have been searching for a month. I can finally get an intuitive idea. Really appreciated!

  • @carlosvillarreal1933
    @carlosvillarreal1933 Před rokem +1

    Hi, I use wavelets and Hilbert transform methods to analyze sea wave data for my Ph.D. in oceanography. Your videos and your book are really helpful. Thanks for your work

  • @salmanjamil1248
    @salmanjamil1248 Před rokem +1

    Wow! Excellent explanation!

  • @muhamadariefhidayat1914

    thank for the clear explanation. i wonder how to interpret frequency domain in 2D. like image. each row in image can be interpreted like your explaination. but as we know that image contain many rows. how we can visualize frequency domain of many rows. in addition images have columns too. thank you

  • @salihaamoura232
    @salihaamoura232 Před 4 lety +2

    شكرا جزيلا لك thank you very much :)

  • @shoebshaikh1790
    @shoebshaikh1790 Před 10 měsíci

    This is pure gold ❤

  • @ErikaBeatrizDelgadoZhagui
    @ErikaBeatrizDelgadoZhagui Před měsícem

    Thank for such as great explanation!!

  • @yaminobia7159
    @yaminobia7159 Před 11 měsíci

    I am doing a math ia on this topic and this video is extremely helpful and easy to understand. Thank you so much

  • @MrMec09
    @MrMec09 Před 5 měsíci

    Thank you, it help me here!

  • @nasrink2086
    @nasrink2086 Před 3 lety

    Very great explanation.
    How we can convert from the time domain to the frequency domain in MATLAB?
    I used the following code to convert data from time domain to frequency, but the plots in the frequency domain are totally different from what I see in this video and I can not get information from them.
    This is the code:
    %% Compute the Fast Fourier Transform FFT of the refrigerator
    dt=.001;
    n=length(ref(9906:31449));
    fhat=fft(ref(9906:31449),n); % Compute the Fast Fourier Transform
    PSD=fhat.*conj(fhat)/n; %Power spectrum (power per frerquency)
    freq=1/(dt*n)*(0:n); %Create x-axis of frequencies in Hz
    L=1:floor(n/2); %Only plot the first half of freqs
    figure;
    plot(freq(L),PSD(L))
    title('FFT')

  • @yasithsam9664
    @yasithsam9664 Před rokem

    Great Explanation :)

  • @AriaBreath
    @AriaBreath Před rokem

    Thanks so much for this fantastic explanation :)

  • @friendshipgreat5290
    @friendshipgreat5290 Před 2 lety

    Thanks bro for this awesome vedio

  • @Pateriyadivya
    @Pateriyadivya Před měsícem

    searched a lot with the physical revelance of frequency domain and the search ended here. Thanks

  • @nwars3961
    @nwars3961 Před 2 lety

    Amazing, thank you ;)

  • @mehmetsensoy96
    @mehmetsensoy96 Před 3 lety

    thank you for that's awesome video

  • @mechanicalbaba2484
    @mechanicalbaba2484 Před 2 lety

    Thats what I was finding, thanks

  • @ckguleria7
    @ckguleria7 Před 2 lety

    finally I know what these frequency graphs tell...

  • @jaivalani4609
    @jaivalani4609 Před 2 lety

    Thanks Mike this clearly explained . Can it happen Noise Amplitude starts dominating sinosodial waves meaning SNR

    • @mikexcohen1
      @mikexcohen1  Před 2 lety

      Cleaning noise from a signal can be trivial, difficult, or impossible, depending on the nature of the signal and the noise. So there isn't one specific strategy that always works. But if the signal and noise have different spectral signatures, then filtering (e.g., FIR filters) is usually pretty successful.

  • @tsehayenegash8394
    @tsehayenegash8394 Před rokem

    I want the code

  • @thomasbayes2154
    @thomasbayes2154 Před 2 lety

    Thank you, I finally understood

  • @ComputerScienceLessons
    @ComputerScienceLessons Před 10 měsíci

    EXCELLENT!!!

  • @abdulmalikadeola
    @abdulmalikadeola Před rokem

    Thank you.

  • @hannav7125
    @hannav7125 Před 3 lety

    thanks Mike

  • @h-salah
    @h-salah Před 2 lety

    THANK YOU

  • @sukursukur3617
    @sukursukur3617 Před 3 lety

    Can we say that: fourier transform is a crosscorellation of a time dependent function with sine or cosine function for different frequencies.

    • @mikexcohen1
      @mikexcohen1  Před 3 lety

      Hmm, I would use that description for a wavelet analysis. The term "cross-correlation" means to repeatedly shift one signal relative to the other. The Fourier transform is better thought of as the correlation (not cross-correlation) between the signal and a set of sine waves. The correlation has two normalization factors that the Fourier transform doesn't have, but otherwise it's a good analogy.

  • @zeynepbetulkaya3645
    @zeynepbetulkaya3645 Před 2 měsíci

    thank you

  • @saraghorbani70
    @saraghorbani70 Před 2 lety

    It was so beneficial to me, and the explains were so clear, but you pointed out why the amplitude is half of the distance between throughs and the peaks. Could you please explain that?

    • @mikexcohen1
      @mikexcohen1  Před 2 lety +1

      Thank you, Sara, that's nice to hear. The answer to your question is in my playlist NEW-ANTS#2, don't remember offhand which video exactly.

  • @abbasbookwala
    @abbasbookwala Před rokem

    AT 3:50 when you say its difficult, yet possible to figure out the frequency components from the time graph, can you help how you would figure that out?

    • @mikexcohen1
      @mikexcohen1  Před rokem

      Well, you'd have to look at the time series data and count the number of peaks (or troughs) within a 1-second window. It's not very precise and can be impossible if there's too much noise.

    • @abbasbookwala
      @abbasbookwala Před rokem

      @@mikexcohen1 Thank you so much for your response

  • @SteveGergetz
    @SteveGergetz Před 3 lety

    That was excellent

  • @ahmedalwaheshi8334
    @ahmedalwaheshi8334 Před 3 lety

    Finaly i understand it thhhaaaaaannnnkkkkkk uuuuu ssssooooooo muchhhhhhhhhh u r a hero

    • @mikexcohen1
      @mikexcohen1  Před 3 lety

      Yoooouuuu'rreee weeeeellllllcccooommmeee!!!

  • @Rushikesh21
    @Rushikesh21 Před 3 lety

    cleared all my doubts sir:)

    • @mikexcohen1
      @mikexcohen1  Před 3 lety +1

      That's good. Doubts make you age faster, so I'm happy I can help you stay young ;)

    • @Rushikesh21
      @Rushikesh21 Před 3 lety

      @@mikexcohen1 😅

  • @mertpurtas8913
    @mertpurtas8913 Před 2 lety

    That was purly ı was looking for .

  • @adhil8918
    @adhil8918 Před 2 lety

    Thanks br0😁

  • @Ranjit4uy2k
    @Ranjit4uy2k Před 3 lety +1

    Nice way presented the Noise, which i struggled before to understand.
    One Question...
    1. In nose induced signal, time domain max amplitude goes to ~5. But frequency domain is 1. Could you clarify plz?

    • @mikexcohen1
      @mikexcohen1  Před 3 lety +1

      I'm not sure which graph you're referring to, but the time domain signal is a combination of all frequencies. Noise is a good example of the advantage of the frequency domain, because noise amplitudes might be smaller in the frequency domain than in the time domain.

    • @Ranjit4uy2k
      @Ranjit4uy2k Před 3 lety

      @@mikexcohen1 This Clarified my query. Awesome explanation dude. Now I understand the FFT.

  • @jasoncui2620
    @jasoncui2620 Před 3 lety

    I'm your big fan

  • @xavihernandez6477
    @xavihernandez6477 Před rokem

    Mr., where r u all these time?

    • @mikexcohen1
      @mikexcohen1  Před rokem

      Don't worry, I'm still around :) working on new courses, books, research, etc. And trying to enjoy the weather now and then!

  • @lolo-cz3yk
    @lolo-cz3yk Před 3 lety +2

    Search ends

  • @rabishrestha804
    @rabishrestha804 Před 3 lety

    Thanks wow

  • @aditikumari3677
    @aditikumari3677 Před 4 lety

    Thank u so much it was really helpful 😇

  • @irethoronar34
    @irethoronar34 Před 2 lety

    Cristal Clear

  • @ahmednor5806
    @ahmednor5806 Před 2 lety

    🙏🙏🌹🌹

  • @8ZER08
    @8ZER08 Před 2 lety

    i love you

  • @3almne
    @3almne Před 3 měsíci

    In the second example, the amplitude must be 5 not 1

  • @roymoran1151
    @roymoran1151 Před 3 lety

    Thank you.