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Uploaded by
Fujimoto Keisuke
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Representation learning by learning to count
Representation learning by learning to count
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Representation learning by learning to count
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• - - - • - →気持ちを画像に掛けて、それを直接学習 →こういう気持ちが画像に掛かってるだろう、 という仮説に基づいて学習
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• 0.34 0.54 0.02 0.41 1.31 CNN CNN CNN CNN
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• • 1.31 1.21 ここを⼀ 致させる
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• - - Highest counting Lowest counting
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