Datasets:
VinayHajare
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Update README.md
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README.md
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@@ -22,10 +22,36 @@ The Fruits30 dataset is a collection of images featuring 30 different types of f
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- **Total Images:** 856
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## Classes:
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## Preprocessing:
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Images have undergone preprocessing to maintain consistency and facilitate model training. Preprocessing steps may include resizing, normalization, and other enhancements.
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The Fruits30 dataset is suitable for tasks such as image classification, object recognition, and machine learning model training within the domain of fruit identification.
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## Sources:
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## Note:
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Ensure proper attribution and compliance with the dataset's licensing terms when using it for research or development purposes.
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- **Total Images:** 856
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## Classes:
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"0" : "acerolas"
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"1" : "apples"
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"2" : "apricots"
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"3" : "avocados"
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"4" : "bananas"
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"5" : "blackberries",
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"6" : "blueberries",
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"7" : "cantaloupes",
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"8" : "cherries",
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"9" : "coconuts",
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"10" : "figs",
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"11" : "grapefruits",
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"12" : "grapes",
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"13" : "guava",
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"14" : "kiwifruit",
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"15" : "lemons",
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"16" : "limes",
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"17" : "mangos",
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"18" : "olives",
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"19" : "oranges",
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"20" : "passionfruit",
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"21" : "peaches",
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"22" : "pears",
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"23" : "pineapples",
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"24" : "plums",
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"25" : "pomegranates",
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"26" : "raspberries",
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"27" : "strawberries",
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"28" : "tomatoes",
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"29" : "watermelons"
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## Preprocessing:
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Images have undergone preprocessing to maintain consistency and facilitate model training. Preprocessing steps may include resizing, normalization, and other enhancements.
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The Fruits30 dataset is suitable for tasks such as image classification, object recognition, and machine learning model training within the domain of fruit identification.
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## Sources:
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Croudsource.
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## Note:
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Ensure proper attribution and compliance with the dataset's licensing terms when using it for research or development purposes.
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