Block Diagram of Sentiment Analysis 

Block Diagram of Sentiment Analysis 

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Do you have a lot of unstructured data in image files? Are you interested in finding out the sentiment of those files? If you are SENTIEXTRACT is the perfect tool for you. In this paper, we have given an insight of our system (SENTIEXTRACT). Our system works on algorithms such as tesseract-ocr to convert image files to text files and naïve bayes cl...

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