Guilherme Martins / Tomato_leaf_disease_detection Public

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Model optimizations can increase on-device performance but may reduce accuracy. Performance estimate for Arduino Nano 33 BLE Sense (Cortex-M4F 64MHz).
Quantized (int8)
Latency
Ram
Flash
Accuracy
Image Classifier Total
11 ms.1,003 ms. 1,014 ms.
4.0K95.3K 95.3K
-69.6K -
-
Unoptimized (float32)
Latency
Ram
Flash
Accuracy
Image Classifier Total
11 ms.7,806 ms. 7,817 ms.
4.0K362.2K 362.2K
-171.9K -
80.73%
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