added code

This commit is contained in:
Bharath Sudharsan 2022-07-23 04:08:11 +01:00
parent 4a9c0cec50
commit 1bacaba9d1
4 changed files with 9165 additions and 1 deletions

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# TinyML-CAM - Image Recognition System that Runs at 60 FPS in 1 Kb of RAM
# TinyML-CAM - Image Recognition System that Runs at 80 FPS in 1 Kb of RAM
### Image Recognition Demo - ESP32
ESP32 classifying Raspberry Pi Pico, Portenta H7, Wio Terminal from image frames
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- **Accuracy** As expected during Pairplot analysis, Portenta and Pi (features overlapped) are mislabelled quite often, which can be rectified by improving dataset quality.
- **Memory** Consumes only 1 kB of RAM - difference between the RAM calculated by Arduino IDE before and after adding the TinyML-CAM image recognition system.
### Code
- [ipynb]-TinyML-CAM-full-code-with-markdown.ipynb
- [h]-HOG-plus-RandomForest-classifier.h
- [ino]-arduino-ESP32-code.ino - upload to

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#include "eloquent.h"
#include "eloquent/print.h"
#include "eloquent/tinyml/voting/quorum.h"
// replace 'm5wide' with your own model
// possible values are 'aithinker', 'eye', 'm5stack', 'm5wide', 'wrover'
#include "eloquent/vision/camera/m5wide.h"
#include "HogPipeline.h"
#include "HogClassifier.h"
Eloquent::TinyML::Voting::Quorum<7> quorum;
void setup() {
Serial.begin(115200);
delay(3000);
Serial.println("Begin");
camera.qqvga();
camera.grayscale();
while (!camera.begin())
Serial.println("Cannot init camera");
}
void loop() {
if (!camera.capture()) {
Serial.println(camera.getErrorMessage());
delay(1000);
return;
}
// apply HOG pipeline to camera frame
hog.transform(camera.buffer);
// get a stable prediction
// this is optional, but will improve the stability of predictions
uint8_t prediction = classifier.predict(hog.features);
int8_t stablePrediction = quorum.vote(prediction);
if (quorum.isStable()) {
eloquent::print::printf(
Serial,
"Stable prediction: %s \t(DSP: %d ms, Classifier: %d us)\n",
classifier.getLabelOf(stablePrediction),
hog.latencyInMillis(),
classifier.latencyInMicros()
);
}
camera.free();
}

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