venerdì 26 aprile 2024

Eth0 su LuckFox Pico Mini A

 Le schede Luckfox Pico Mini A (a differenza delle sorelle maggiori) non hanno un connettore RJ45 e nonostante i pin da saldare non sembrano poter disporre di connessione di rete Ethernet.

In realta' basta saldare un cavo ethernet come da foto e modificare il kernel per abilitare la rete

I colori del cavo ethernet da collegare sono



 

TXP : verde bianco
TXN : verde
RXP : arancio bianco
RXN : arancio


Per compilare il kernel sono preferito partire dall'SDK 

Ho clonato il repository https://github.com/LuckfoxTECH/luckfox-pico in /home/luca/luckfox ed ho installato il docker

sudo docker run -it --name luckfox -v /home/luca/luckfox:/home luckfoxtech/luckfox_pico:1.0 /bin/bash
 

A questo punto

cd tools/linux/toolchain/arm-rockchip830-linux-uclibcgnueabihf/
source env_install_toolchain.sh

Per abilitare la ethernet in Pico Mini A si modifica il file rv1103g-luckfox-pico-mini-a.dts che si trova in 

 /home/luca/luckfox-pico/sysdrv/source/kernel/arch/arm/boot/dts

 sostituendo sotto la stringa &gmac lo status in okay

/**********ETH**********/
&gmac {
    status = "okay";
};

/**********USB**********/

 si compila il kernel con ./build.sh lunch (opzione 1) e ./build.sh

Attenzione: per l'immagine Ubuntu non funziona la camera

I file si troveranno nella cartella IMAGE  

Tramite il tool https://files.luckfox.com/wiki/Luckfox-Pico/Software/SocToolKit.zip

ATTENZIONE: VirusTotal segnala presenza di virus (aprire in sandbox)

si crea la scheda SD con i file appena generati


 Tutto funziona camera compresa...attenzione a non usare VLC. Io ho usato il player rtsp integrato in Firefox

 


 

 

 

 

 

martedì 23 aprile 2024

Perche' investire su Unix

 Un libro trovato nel libero scambio alla Coop su cio' che poteva essere e non e' stato...interessante la storia su Unix del primo capitolo





Arcobaleno

 Si vede poco ma era un doppio arcobaleno





sabato 20 aprile 2024

Frane con rete DeepLabV3

Aggiornamento

Per usare la GPU T4 sono migrato su Google Colab

Per avere Keras 3 sono state fatte le seguenti modifiche

!pip install keras --upgrade --quiet
!pip install keras-preprocessing==1.0.6
import keras
import os
os.environ["KERAS_BACKEND"] = "tensorflow"

inoltre su Colab non sono riuscito a salvare il modello in .keras o in .hd5.Per questo motivo ho usato il formato dati legacy

tf.saved_model.save(model,"/content/drive/MyDrive/UAV/salvataggio/")

Su Colab sono riuscito a portare il training fino a 25 epochs. Si nota come la T4 sia nettamente superiore al M1








------------------------------------------------------------------------


Nel post precedente avevo trovato che il letteratura i risultati migliori per la segmentazione delle frane e' stati ottenuti con la rete DeepLabV3. 

Ho usato l'esempio a questo link per provare con lo stesso dataset del post precedente. Attenzione, e' necessario utilizzare Keras 3


questo e' il codice leggermente riadattato per puntare alle immagini delle frane

#!/usr/bin/env python
# coding: utf-8

# In[1]:


import keras
from keras import layers
from keras import ops

import os
import numpy as np
from glob import glob
import cv2
from scipy.io import loadmat
import matplotlib.pyplot as plt

# For data preprocessing
get_ipython().system('pip install tensorflow')
from tensorflow import image as tf_image
from tensorflow import data as tf_data
from tensorflow import io as tf_io


# In[2]:


IMAGE_SIZE = 512
BATCH_SIZE = 4
NUM_CLASSES = 2
#DATA_DIR = "./1/instance-level_human_parsing/instance-level_human_parsing/Training"
DATA_DIR = "./UAV"

NUM_TRAIN_IMAGES = 900
NUM_VAL_IMAGES = 100

train_images = sorted(glob(os.path.join(DATA_DIR, "img/*")))[:NUM_TRAIN_IMAGES]
train_masks = sorted(glob(os.path.join(DATA_DIR, "mask/*")))[:NUM_TRAIN_IMAGES]
val_images = sorted(glob(os.path.join(DATA_DIR, "img/*")))[
NUM_TRAIN_IMAGES : NUM_VAL_IMAGES + NUM_TRAIN_IMAGES
]
val_masks = sorted(glob(os.path.join(DATA_DIR, "mask/*")))[
NUM_TRAIN_IMAGES : NUM_VAL_IMAGES + NUM_TRAIN_IMAGES
]


def read_image(image_path, mask=False):
image = tf_io.read_file(image_path)
if mask:
image = tf_image.decode_png(image, channels=1)
image.set_shape([None, None, 1])
image = tf_image.resize(images=image, size=[IMAGE_SIZE, IMAGE_SIZE])
else:
image = tf_image.decode_png(image, channels=3)
image.set_shape([None, None, 3])
image = tf_image.resize(images=image, size=[IMAGE_SIZE, IMAGE_SIZE])
return image


def load_data(image_list, mask_list):
image = read_image(image_list)
mask = read_image(mask_list, mask=True)
return image, mask


def data_generator(image_list, mask_list):
dataset = tf_data.Dataset.from_tensor_slices((image_list, mask_list))
dataset = dataset.map(load_data, num_parallel_calls=tf_data.AUTOTUNE)
dataset = dataset.batch(BATCH_SIZE, drop_remainder=True)
return dataset


train_dataset = data_generator(train_images, train_masks)
val_dataset = data_generator(val_images, val_masks)

print("Train Dataset:", train_dataset)
print("Val Dataset:", val_dataset)


# In[3]:


def convolution_block(
block_input,
num_filters=256,
kernel_size=3,
dilation_rate=1,
use_bias=False,
):
x = layers.Conv2D(
num_filters,
kernel_size=kernel_size,
dilation_rate=dilation_rate,
padding="same",
use_bias=use_bias,
kernel_initializer=keras.initializers.HeNormal(),
)(block_input)
x = layers.BatchNormalization()(x)
return ops.nn.relu(x)


def DilatedSpatialPyramidPooling(dspp_input):
dims = dspp_input.shape
x = layers.AveragePooling2D(pool_size=(dims[-3], dims[-2]))(dspp_input)
x = convolution_block(x, kernel_size=1, use_bias=True)
out_pool = layers.UpSampling2D(
size=(dims[-3] // x.shape[1], dims[-2] // x.shape[2]),
interpolation="bilinear",
)(x)

out_1 = convolution_block(dspp_input, kernel_size=1, dilation_rate=1)
out_6 = convolution_block(dspp_input, kernel_size=3, dilation_rate=6)
out_12 = convolution_block(dspp_input, kernel_size=3, dilation_rate=12)
out_18 = convolution_block(dspp_input, kernel_size=3, dilation_rate=18)

x = layers.Concatenate(axis=-1)([out_pool, out_1, out_6, out_12, out_18])
output = convolution_block(x, kernel_size=1)
return output


# In[4]:


def DeeplabV3Plus(image_size, num_classes):
model_input = keras.Input(shape=(image_size, image_size, 3))
preprocessed = keras.applications.resnet50.preprocess_input(model_input)
resnet50 = keras.applications.ResNet50(
weights="imagenet", include_top=False, input_tensor=preprocessed
)
x = resnet50.get_layer("conv4_block6_2_relu").output
x = DilatedSpatialPyramidPooling(x)

input_a = layers.UpSampling2D(
size=(image_size // 4 // x.shape[1], image_size // 4 // x.shape[2]),
interpolation="bilinear",
)(x)
input_b = resnet50.get_layer("conv2_block3_2_relu").output
input_b = convolution_block(input_b, num_filters=48, kernel_size=1)

x = layers.Concatenate(axis=-1)([input_a, input_b])
x = convolution_block(x)
x = convolution_block(x)
x = layers.UpSampling2D(
size=(image_size // x.shape[1], image_size // x.shape[2]),
interpolation="bilinear",
)(x)
model_output = layers.Conv2D(num_classes, kernel_size=(1, 1), padding="same")(x)
return keras.Model(inputs=model_input, outputs=model_output)


model = DeeplabV3Plus(image_size=IMAGE_SIZE, num_classes=NUM_CLASSES)
model.summary()


# In[5]:


loss = keras.losses.SparseCategoricalCrossentropy(from_logits=True)
model.compile(
optimizer=keras.optimizers.Adam(learning_rate=0.001),
loss=loss,
metrics=["accuracy"],
)

history = model.fit(train_dataset, validation_data=val_dataset, epochs=10)

plt.plot(history.history["loss"])
plt.title("Training Loss")
plt.ylabel("loss")
plt.xlabel("epoch")
plt.show()

plt.plot(history.history["accuracy"])
plt.title("Training Accuracy")
plt.ylabel("accuracy")
plt.xlabel("epoch")
plt.show()

plt.plot(history.history["val_loss"])
plt.title("Validation Loss")
plt.ylabel("val_loss")
plt.xlabel("epoch")
plt.show()

plt.plot(history.history["val_accuracy"])
plt.title("Validation Accuracy")
plt.ylabel("val_accuracy")
plt.xlabel("epoch")
plt.show()


# In[6]:


# Loading the Colormap
colormap = loadmat(
"./1/instance-level_human_parsing/instance-level_human_parsing/human_colormap.mat"
)["colormap"]
colormap = colormap * 100
colormap = colormap.astype(np.uint8)


def infer(model, image_tensor):
predictions = model.predict(np.expand_dims((image_tensor), axis=0))
predictions = np.squeeze(predictions)
predictions = np.argmax(predictions, axis=2)
return predictions


def decode_segmentation_masks(mask, colormap, n_classes):
r = np.zeros_like(mask).astype(np.uint8)
g = np.zeros_like(mask).astype(np.uint8)
b = np.zeros_like(mask).astype(np.uint8)
for l in range(0, n_classes):
idx = mask == l
r[idx] = colormap[l, 0]
g[idx] = colormap[l, 1]
b[idx] = colormap[l, 2]
rgb = np.stack([r, g, b], axis=2)
return rgb


def get_overlay(image, colored_mask):
image = keras.utils.array_to_img(image)
image = np.array(image).astype(np.uint8)
overlay = cv2.addWeighted(image, 0.35, colored_mask, 0.65, 0)
return overlay


def plot_samples_matplotlib(display_list, figsize=(5, 3)):
_, axes = plt.subplots(nrows=1, ncols=len(display_list), figsize=figsize)
for i in range(len(display_list)):
if display_list[i].shape[-1] == 3:
axes[i].imshow(keras.utils.array_to_img(display_list[i]))
else:
axes[i].imshow(display_list[i])
plt.show()


def plot_predictions(images_list, colormap, model):
for image_file in images_list:
image_tensor = read_image(image_file)
prediction_mask = infer(image_tensor=image_tensor, model=model)
prediction_colormap = decode_segmentation_masks(prediction_mask, colormap, 20)
overlay = get_overlay(image_tensor, prediction_colormap)
plot_samples_matplotlib(
[image_tensor, overlay, prediction_colormap], figsize=(18, 14)
)


# In[7]:


plot_predictions(train_images[:4], colormap, model=model)


# ### Inference on Validation Images
#
# You can use the trained model hosted on [Hugging Face Hub](https://huggingface.co/keras-io/deeplabv3p-resnet50)
# and try the demo on [Hugging Face Spaces](https://huggingface.co/spaces/keras-io/Human-Part-Segmentation).

# In[8]:


plot_predictions(val_images[:4], colormap, model=model)


# In[12]:


get_ipython().system('pip install ipython')
get_ipython().system('mkdir -p saved_model_2')
model.save('saved_model_2/landslide.keras')


Anche su M1 il calcolo e' molto lento....sarebbe stati necessari piu' di 10 epochs per trovare l'asintoto della Loss ma ogni epoch ha impiegato ogni 25 minuti per circa 1000 immagini







in conclusione si vede che le accuracy e' nettamente superiore rispetto a Unet a conferma di quanto riportato in letteratura













venerdì 19 aprile 2024

Frane da drone con rete UNET

Alla ricerca di immagini di training gia' pronte per reti neurali mi sono imbattuto nel CAS Landslide Database (scaricabile da https://zenodo.org/records/10294997). Sono oltre Gb di immagini tif con immagini di frane sia da satellite che da drone con gia' pronta la maschera della verita' a terra. (avevo gia' provato in questo post)

Il database e' stato oggetto di un articolo di Nature

A questo link viene riportata anche una tabella comparativa di diversi metodi sviluppati sul medesimo dataset


 

Per una prova ho abbondato Colab per installare Tensorflow e Jupyter Notebook su Mac Air M1 e vedere se poteva essere una base di sviluppo. 

conda config --set auto_activate_base false

conda create --name mlp python=3.8 

conda activate mlp   

conda install -c apple tensorflow-deps    

pip install tensorflow-macos   

pip install tensorflow-metal

conda install jupyter pandas numpy matplotlib scikit-learn

jupyter notebook        


Le immagini del dataset Moxitaidi (UAV-0.6m) sono state trasformate in jpg ( magick mogrify -format jpg *.tif) e ridotte 256x256 (mogrify -resize 256x256 *.jpg) tramite imagemagick e sono state rinominate le maschere tramite il comando bash (for f in *.png; do mv "$f" "${f//mask/image}"; done ). Rispetto a quanto provato qui il numero delle epochs e' stato ridotto a 40. M1 si e' comportato egregiamente come velocita' (circa 70 secondi per ogni epoch)


#!/usr/bin/env python
# coding: utf-8

# In[1]:


from functools import partial
import os

import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
import tensorflow as tf
from tensorflow import keras


# In[2]:


images_dir = './UAVjpg256/img/'
masks_dir = './UAVjpg256/mask/'

dirname, _, filenames = next(os.walk(images_dir))


@tf.function
def load_img_with_mask(image_path, images_dir: str = 'img', masks_dir: str = 'label',images_extension: str = 'jpg', masks_extension: str = 'jpg') -> dict:
image = tf.io.read_file(image_path)
image = tf.image.decode_jpeg(image, channels=3)

mask_filename = tf.strings.regex_replace(image_path, images_dir, masks_dir)
mask_filename = tf.strings.regex_replace(mask_filename, images_extension, masks_extension)
mask = tf.io.read_file(mask_filename)
mask = tf.image.decode_image(mask, channels=1, expand_animations = False)
return (image, mask)

n_examples = 3
examples = [load_img_with_mask(os.path.join(images_dir, filenames[i])) for i in range(n_examples)]

fig, axs = plt.subplots(n_examples, 2, figsize=(14, n_examples*7), constrained_layout=True)
for ax, (image, mask) in zip(axs, examples):
ax[0].imshow(image)
ax[1].imshow(mask)
plt.show()


# In[3]:


@tf.function
def resize_images(images, masks, max_image_size=1500):
shape = tf.shape(images)
scale = (tf.reduce_max(shape) // max_image_size) + 1
target_height, target_width = shape[-3] // scale, shape[-2] // scale
images = tf.cast(images, tf.float32)
masks = tf.cast(masks, tf.float32)
if scale != 1:
images = tf.image.resize(images, (target_height, target_width), method=tf.image.ResizeMethod.NEAREST_NEIGHBOR)
masks = tf.image.resize(masks, (target_height, target_width), method=tf.image.ResizeMethod.NEAREST_NEIGHBOR)
return (images, masks)

@tf.function
def scale_values(images, masks, mask_split_threshold = 128):
images = tf.math.divide(images, 255)
masks = tf.where(masks > mask_split_threshold, 1, 0)
return (images, masks)

@tf.function
def pad_images(images, masks, pad_mul=16, offset=0):
shape = tf.shape(images)
height, width = shape[-3], shape[-2]
target_height = height + tf.math.floormod(tf.math.negative(height), pad_mul)
target_width = width + tf.math.floormod(tf.math.negative(width), pad_mul)
images = tf.image.pad_to_bounding_box(images, offset, offset, target_height, target_width)
masks = tf.cast(tf.image.pad_to_bounding_box(masks, offset, offset, target_height, target_width), tf.uint8)
return (images, masks)

batch_size = 32
test_set_size = 200
validation_set_size = 150


# In[4]:


dataset = tf.data.Dataset.list_files(images_dir + '*.jpg', seed=42)

test_dataset = dataset.take(test_set_size)
dataset = dataset.skip(test_set_size)
test_dataset = test_dataset.map(load_img_with_mask)
test_dataset = test_dataset.map(scale_values)
test_dataset = test_dataset.shuffle(20)
test_dataset = test_dataset.map(lambda img, mask: resize_images(img, mask, max_image_size=2500))
test_dataset = test_dataset.map(pad_images)
test_dataset = test_dataset.batch(1).prefetch(5)


validation_dataset = dataset.take(validation_set_size)
train_dataset = dataset.skip(validation_set_size)
validation_dataset = validation_dataset.map(load_img_with_mask)
validation_dataset = validation_dataset.map(scale_values)
validation_dataset = validation_dataset.shuffle(20)
validation_dataset = validation_dataset.map(resize_images)
validation_dataset = validation_dataset.map(pad_images)
validation_dataset = validation_dataset.batch(1).prefetch(5)

train_dataset = train_dataset.map(load_img_with_mask)
train_dataset = train_dataset.map(scale_values)
train_dataset = train_dataset.shuffle(20)
train_dataset = train_dataset.map(resize_images)
train_dataset = train_dataset.map(pad_images)
train_dataset = train_dataset.batch(1).prefetch(5)


# In[5]:


def get_unet(hidden_activation='relu', initializer='he_normal', output_activation='sigmoid'):
PartialConv = partial(keras.layers.Conv2D,
activation=hidden_activation,
kernel_initializer=initializer,
padding='same')
# Encoder
model_input = keras.layers.Input(shape=(None, None, 3))
enc_cov_1 = PartialConv(32, 3)(model_input)
enc_cov_1 = PartialConv(32, 3)(enc_cov_1)
enc_pool_1 = keras.layers.MaxPooling2D(pool_size=(2, 2))(enc_cov_1)
enc_cov_2 = PartialConv(64, 3)(enc_pool_1)
enc_cov_2 = PartialConv(64, 3)(enc_cov_2)
enc_pool_2 = keras.layers.MaxPooling2D(pool_size=(2, 2))(enc_cov_2)
enc_cov_3 = PartialConv(128, 3)(enc_pool_2)
enc_cov_3 = PartialConv(128, 3)(enc_cov_3)
enc_pool_3 = keras.layers.MaxPooling2D(pool_size=(2, 2))(enc_cov_3)
# Center
center_cov = PartialConv(256, 3)(enc_pool_3)
center_cov = PartialConv(256, 3)(center_cov)
# Decoder
upsampling1 = keras.layers.UpSampling2D(size=(2, 2))(center_cov)
dec_up_conv_1 = PartialConv(128, 2)(upsampling1)
dec_merged_1 = tf.keras.layers.Concatenate(axis=3)([enc_cov_3, dec_up_conv_1])
dec_conv_1 = PartialConv(128, 3)(dec_merged_1)
dec_conv_1 = PartialConv(128, 3)(dec_conv_1)
upsampling2 = keras.layers.UpSampling2D(size=(2, 2))(dec_conv_1)
dec_up_conv_2 = PartialConv(64, 2)(upsampling2)
dec_merged_2 = tf.keras.layers.Concatenate(axis=3)([enc_cov_2, dec_up_conv_2])
dec_conv_2 = PartialConv(64, 3)(dec_merged_2)
dec_conv_2 = PartialConv(64, 3)(dec_conv_2)
upsampling3 = keras.layers.UpSampling2D(size=(2, 2))(dec_conv_2)
dec_up_conv_3 = PartialConv(32, 2)(upsampling3)
dec_merged_3 = tf.keras.layers.Concatenate(axis=3)([enc_cov_1, dec_up_conv_3])
dec_conv_3 = PartialConv(32, 3)(dec_merged_3)
dec_conv_3 = PartialConv(32, 3)(dec_conv_3)
output = keras.layers.Conv2D(1, 1, activation=output_activation)(dec_conv_3)
return tf.keras.Model(inputs=model_input, outputs=output)



model = get_unet()

optimizer = tf.keras.optimizers.Nadam()
model.compile(loss='binary_crossentropy', optimizer=optimizer)

model.summary()


# In[6]:


early_stopping = tf.keras.callbacks.EarlyStopping(monitor='val_loss', patience=5)
lr_reduce = tf.keras.callbacks.ReduceLROnPlateau(monitor='val_loss', factor=0.3, patience=3, verbose=1)

epochs = 40
history = model.fit(train_dataset, validation_data=validation_dataset, epochs=epochs, callbacks=[early_stopping, lr_reduce])


# In[7]:


get_ipython().system('mkdir -p saved_model')
model.save('saved_model/landslide_drone')


# In[8]:


converter = tf.lite.TFLiteConverter.from_saved_model('saved_model/landslide_drone')
tflite_model = converter.convert()

with open('model.tflite', 'wb') as f:
f.write(tflite_model)


# In[9]:


n_examples = 10

fig, axs = plt.subplots(n_examples, 3, figsize=(14, n_examples*7), constrained_layout=True)
for ax, ele in zip(axs, test_dataset.take(n_examples)):
image, y_true = ele
prediction = model.predict(image)[0]
prediction = tf.where(prediction > 0.6, 255, 0)
ax[0].set_title('Original image')
ax[0].imshow(image[0])
ax[1].set_title('Original mask')
ax[1].imshow(y_true[0])
ax[2].set_title('Predicted area')
ax[2].imshow(prediction)

plt.show()


# In[10]:


meanIoU = tf.keras.metrics.MeanIoU(num_classes=2)
for ele in test_dataset.take(test_set_size):
image, y_true = ele
prediction = model.predict(image)[0]
prediction = tf.where(prediction > 0.5, 1, 0)
meanIoU.update_state(y_true[0], prediction)
print(meanIoU.result().numpy())

Questi sono due esempi dei risulati




Eth0 su LuckFox Pico Mini A

 Le schede Luckfox Pico Mini A (a differenza delle sorelle maggiori) non hanno un connettore RJ45 e nonostante i pin da saldare non sembrano...