Video Classification with a CNN-RNN Architecture | Human Activity Recognition

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Video Classification is the task of predicting a label that is relevant to the video.

Topics which I will cover in this Video Classification Tutorial are:
Overview of Video Classification
Steps to build our own Video Classification model
Exploring the Video Classification dataset
Training our Video Classification Model
Evaluating our Video Classification Model

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What are videos?

Videos are a collection of images(frames) arranged in a specific order.

In Image classification: we take images, use feature extractors (like convolutional neural networks or CNNs) to extract features from images, and then classify that image based on these extracted features.  Video classification involves just one extra step.

While performing Video classification:
1- We first extract frames from the given video.
2- use feature extractors (like convolutional neural networks or CNNs) to extract features from all the frames,
3- Classify every frame based on these extracted features.

Before we talk about Video Classification, let us first understand what is Human Activity Recognition?.
The task of classifying or predicting the activity/action performed by someone is called Activity recognition.

With the help of Video Classification models we can solve the problem of Human Activity Recognition.

#VideoClassifier #VideoClassification #HumanActivityRecognition #CNN #RNN #AI #ComputerVision #DeepLearning #ArtificialIntelligence

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Thank you so much for creating such a clear and detailed video! Your effort and dedication truly shine through, and your content made our day. The way you presented the information was not only informative but also engaging. We appreciate the time and hard work you put into making this video, and it has undoubtedly added value to our understanding. Keep up the fantastic work, and we look forward to more insightful content from you in the future! 🌟

muhammadfahadmunir
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Glad to see your video after many days. Thanks for uploading it Aarohi ji

shekharkumar
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Very informative mam...helpful video for video classification

varagantimanjula
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Than you for the video, To classify between sitting and walking, should we simply include videos within the respective classes?

st-whwc
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Thank you for this amazing video, very helpful♥♥

AishaGh
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great explanation! thanks from online community

leonidas
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Really Ma'am you are gem. Plz make video on real time pest detection.
It will be a great project definitely.

insharaaj
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maam i know more from your YT than they taught me in 2years of CS

patrycjabiryo
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nice explanation, will it work for deepfake videos ?

Electro_words_with_sandhya
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Your code is 100% functionally ¿How can I predict a specifically video instead of random one as you do on last line code "test_video = ? Thanks

leonidas
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Amazing Mam,
can you share your video datasets?
or you using a open dataset ?
thanks before

haze.
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Hi! thank you very much! I was wondering where can I download the dataset you used for this?

julia_in_tech
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thank you mam, can u pls tell how to load sensor data and image as input for human activity recognition

jansirani
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mam can i classifier vibrational data from unvibrational in video using deep learning??

KhurramIshtiaq-di
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Aarohi i am working on ffcresnet with lstm for video classification i extracted features from train and test using ffcresnet but i struct at lstm getting error tensor mismatch between sequences and targets

sanjuchinni
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Thanks for this great video. I have learnt a lot from the videos but ı have a problem. I cant download tensorflow, somehow. Is there a way that ı need to follow?

serkanbcakc
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Nice teaching. Could you tell me how you collect the dataset?

mdabdullahalhasib
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Thank you Mam for such amazing videos. Is there any possibility that we can connect your 2 works in one? You taught: How to do custom keypoint detection using detectron2. Is there any possibility that I can detect the action of a person using the output of detectron2 keypoint detection and LSTM?

PoojaKumari-iczh
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Thanks mam for uploading 👏👏👏👏 it is really helpfull if possible make an video on oversampling in deep learning best channel on yt

chronologyofai
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Thank you so much for uploading this amazing video mam. Could you pls guide me on how to recognize emotions from videos mam? I also checked your website link but the, unfortunately, the site has been blocked. Thank you so much mam

mohanaph.d.csscholar