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IMAGE ANALYSIS AND IMAGE RECOGNITION

So what is image analysis? Basically image analysis is a program for identifying subject from the image, it can identyfying color, shape, and etc. This technology still being developed to get the closer result like human eyes. This day the image analysis technology is very important for computer, so the computer can easly recognize something by an image and get new information from the similar data. Image analysis basically just like reading a barcode. So by only submit the image to the application you can get all the result that you want, you can get all the information, all the similar image, and etc.
Image analysis also teach a computer to see, how? Just like the way we see something, a computer use computer vision and image recognition. But not with the eyes but with the processing part. AI powered by image recognition uses computer vision to make sense of input recieved. Google image search is an example.
But what the different between image analysis and image recognition? Image analysis it’s for image you’ve already input to the program, so when the computer find an image you haven’t input before, it will recoggnize it. But image recognition can do that, because it can automatically search the reasult from internet, and also all the similar things. Image recognition  applications can help us to skim te amount of data, eliminating spam, identifying the important data, so this technology can help us to be more efficient in work.
Are we need the image analysis and image recognation technology? Yes of course, this technology can help us in everyneed, we can easly look for something that we don’t know what its name, with only a picture we can get everthing that we need. As long as we use this technology in wise way, it’s fine, because everything that we do also have an impact for us.

Muhammad Agung Fadhillah
106218065

Sources:
https://www.surveymonkey.com/r/AlandML
https://www.talkwalker.com/blog/what-is-image-analysis

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