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Detect emotions of your favorite toons (Hackerearth DL challenge)

Jupyter Notebook 61.74% Python 38.26%
deep-learning image-processing video-processing sentiment-classification competitions challenge detect-emotions

hackerearth-deep-learning-challenge's Introduction

HackerEarth-Deep-Learning-challenge (Final results - Winner)

Detect emotions of your favorite toons

Problem statement:

There is no one around the world who doesn’t know of the animated comedy series, Tom and Jerry. Let’s admit it—all of us still love the iconic show and wish to catch a glimpse of Tom’s and Jerry’s constant notorious banter. Jerry leaves no stone unturned to annoy Tom—be it getting Tom in trouble with his landlady Mammy Two Shoes and his arch-nemesis Spike, making a fool out of him in front of his love interest Toodles Galore, or beating him for bothering Nibbles or Quaker. No matter what, we always end up laughing till our stomachs hurt. On this International Day of Happiness, we are bringing back all the joy and happiness with this challenge. In this challenge, you are required to build a model that detects emotions of the characters in a video frame from our most-loved show, Tom and Jerry. The task is to extract frames from a video clip provided and classify the primary character’s emotion into one of the five classes: angry, happy, sad, surprised, or Unknown.

Dataset:

The dataset consists of two parameters—‘Frame_ID’ that indicates the frame of the video and ‘Emotion’ that categorizes the emotion of the primary character into different labels: angry, happy, sad, surprised, or Unknown. The benefits of practicing this problem by using Machine Learning/Deep Learning techniques are as follows: This challenge will encourage you to apply your Machine Learning skills to build models that analyze and classify frames of videos.This challenge will help you enhance your knowledge of multi-label image classification actively. It is one of the basic building blocks of Deep Learning.

Running:

Please follow code.ipynb for the results.

Future works:

The model could be trained on more videos to get more accurate results.

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