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Fixing typos in 2 files (#1048)
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@@ -198,7 +198,7 @@ As discussed before, we should capture data from all four Transportation Classes
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\noindent
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**Idle** (Paletts in a warehouse). No movement detected by the accelerometer:
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**Idle** (Palettes in a warehouse). No movement detected by the accelerometer:
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\noindent
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@@ -348,7 +348,7 @@ If the Periquito is detected (Label:1), the LED is ON:
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{width=80% fig-align="center"}
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Therefore, we can now power the Grove Viaon AI V2 + Xiao ESP32S3 with an external battery, and the inference result will be displayed by the LED completely offline. The consumption is approximately 165 mA or 825 mW.
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Therefore, we can now power the Grove Vision AI V2 + Xiao ESP32S3 with an external battery, and the inference result will be displayed by the LED completely offline. The consumption is approximately 165 mA or 825 mW.
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> It is also possible to send the result using Wifi, BLE, or other communication protocols available on the used Master Device.
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