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Leveraging advanced image processing and deep learning, this project classifies plant images using a subset of the Plant Seedlings dataset. The dataset includes diverse plant species captured under varying conditions. This project holds significance within my Master's in Computer Vision at uOttawa (2023).

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Weed Species Classification and Bounding Box Regression

Leveraging advanced image processing and deep learning, this project focuses on CNNs and the Keras API for image processing and regression tasks related to plant images, particularly weed species from Plant Seedlings dataset"I worked on a subset". The project involves data preparation, basic transfer learning using the VGG-16 model, classification, and regression networks. Regularization methods are applied to improve the model, and discussions on overfitting and the impact of regularization are included. The submission requires a Jupyter file containing the solution, and late submissions are not allowed. It's contributes to understanding CNNs, transfer learning, and handling small training data. This project holds significance within my Master's in Computer Vision at uOttawa (2023).

  • Required libraries: scikit-learn, pandas, matplotlib.
  • Execute cells in a Jupyter Notebook environment.
  • The uploaded code has been executed and tested successfully within the Google Colab environment.

Image classification and bounding box regression using transfer learning with a VGG-16 model.

The dataset comprises 4 classes with 250 images each, divided into training,and testing sets, images size are differnet: Cleavers, Common Chickweed, Maize, Shepherd’s Purse,

Key Tasks Undertaken

  1. Data Preparation:

    • Uploaded a subset of the dataset from Google Drive.

    • Extracted the dataset and organized it into 70% training, 15% validation, and 15% testing sets.

      • Traning Set

      • Validation Set

      • Testing Set

    • Loaded the data, resized images to 32x32 pixels, and created DataFrames for each set.

       Training Data Size: 700
       Training Data Label Counts:
       Shepherds_Purse     175
       Common_Chickweed    175
       Cleavers            175
       Maize               175
       Name: Label, dtype: int64 
       
       Size of the Images in Training Data: (32, 32, 3)
       ----------------------------------------------------------------
       
       Validation Data Size: 148
       Validation Data Label Counts:
       Shepherds_Purse     37
       Common_Chickweed    37
       Cleavers            37
       Maize               37
       Name: Label, dtype: int64 
       
       Size of the Images in Validation Data: (32, 32, 3)
       ----------------------------------------------------------------
       
       Test Data Size: 152
       Test Data Label Counts:
       Shepherds_Purse     38
       Common_Chickweed    38
       Cleavers            38
       Maize               38
       Name: Label, dtype: int64
       Size of the Images in Test Data: (32, 32, 3)
       ----------------------------------------------------------------
  2. Classification Network (Transfer Learning):

    • Used the first 2 blocks of VGG-16 model for transfer learning.
    • Modified the model by adding custom layers for classification.
       # Add custom layers
       x = Conv2D(256, (3, 3), activation='relu', padding='same')(x)
       x = MaxPooling2D((2, 2))(x)
       x = Conv2D(128, (3, 3), activation='relu', padding='same')(x)
       x = MaxPooling2D((2, 2))(x)
       x = Flatten()(x)
       outputs = Dense(4, activation='softmax')(x)  # Output layer for 4 classes
      
      # Create the custom model
      classification_model = Model(inputs=vgg_model.input, outputs=outputs)
    • One-hot encoded the labels.
    • Trained the classification model, monitored convergence, and visualized learning curves.
       batchSize = 64
       nEpochs = 100
       
       # Compile the model
       classification_model.compile(optimizer='adam', loss='categorical_crossentropy', metrics=['accuracy'])
       
       # Train the model
       history = classification_model.fit(X_train, y_train_k, batch_size=batchSize, epochs=nEpochs, verbose=1, validation_data=(X_valid, y_valid_k))

    • Plotted and analyzed the confusion matrix for training, validation, and testing datasets.

  3. Regression Network (Transfer Learning):

    • Loaded bounding box dimensions from the .json file.

    • Normalized height and width values.

    • Split the data into 70% training, 15% validation, and 15% testing sets.

       Training Data Size: 700
       Training Data Label Counts:
       Shepherds_Purse     175
       Common_Chickweed    175
       Cleavers            175
       Maize               175
       Name: Label, dtype: int64 
       
       ----------------------------------------------------------------
       
       Validation Data Size: 148
       Validation Data Label Counts:
       Shepherds_Purse     37
       Common_Chickweed    37
       Cleavers            37
       Maize               37
       Name: Label, dtype: int64 
       
       ----------------------------------------------------------------
       
       Test Data Size: 152
       Test Data Label Counts:
       Shepherds_Purse     38
       Common_Chickweed    38
       Cleavers            38
       Maize               38
       Name: Label, dtype: int64
    • Used VGG-16 for transfer learning with custom layers for regression.

       # Add custom layers
       x_regression = Conv2D(256, (3, 3), activation='relu', padding='same')(x_regression)
       x_regression = MaxPooling2D((2, 2))(x_regression)
       x_regression = Conv2D(128, (3, 3), activation='relu', padding='same')(x_regression)
       x_regression = MaxPooling2D((2, 2))(x_regression)
       x_regression = Flatten()(x_regression)
       height_output = Dense(1, activation='linear', name='height')(x_regression)
       width_output = Dense(1, activation='linear', name='width')(x_regression)
      
      # Create the custom regression model
      regression_model = Model(inputs=regression_vgg_model.input, outputs=[height_output, width_output])
    • Trained the regression model, monitored convergence, and visualized learning curves.

         batchSize = 64
         nEpochs = 100
      
         # Compile the model
         regression_model.compile(optimizer='adam', loss='mean_squared_error', metrics=['mean_squared_error'])
       
         # Train the regression model
         results =regression_model.fit(X_train_regression, [y_train_height, y_train_width], epochs=nEpochs, validation_data= 
         (X_valid_regression, [y_valid_height, y_valid_width]))

    • Calculated mean squared error and mean absolute error for training, validation, and testing datasets.

        22/22 [==============================] - 0s 4ms/step
       Mean Squared Error for height - Train: 0.002856253375326049, width - Train: 0.003164909554132075
       Mean Absolute Error for height - Train: 0.04336496062917911, width - Train: 0.04329592842347164
       
       5/5 [==============================] - 0s 4ms/step
       Mean Squared Error for height - Validation: 0.09055006138348325, width - Validation: 0.06981748160195345
       Mean Absolute Error for height - Validation: 0.2218270389548888, width - Validation: 0.20934197684151834
       
       5/5 [==============================] - 0s 4ms/step
       Mean Squared Error for height - Test: 0.07094346629570776, width - Test: 0.08139776182780212
       Mean Absolute Error for height - Test: 0.2150076942617718, width - Test: 0.22207330307667558
  4. Model Improvement (Classification Network):

    • Modified the VGG-16 model by adding extra Keras layers and Introduced regularization techniques such as Batch
      Normalization and Dropout.
       # Add custom layers with regularization
       x_new  = Conv2D(256, (3, 3), activation='relu', padding='same')(x_new )
       x_new  = BatchNormalization()(x_new )  # Batch Normalization layer
       x_new  = MaxPooling2D((2, 2))(x_new)
       x_new  = Conv2D(128, (3, 3), activation='relu', padding='same')(x_new)
       x_new  = BatchNormalization()(x_new)  # Batch Normalization layer
       x_new  = MaxPooling2D((2, 2))(x_new)
       x_new  = Flatten()(x_new)
       x_new  = Dropout(0.5)(x_new)  # Dropout layer with a dropout rate of 0.5
       outputs = Dense(4, activation='softmax')(x_new)  # Output layer for 4 classes
       
       # Create the model
       new_custom_model = Model(inputs=new_vgg_model.input, outputs=outputs)
    • Trained the improved classification model, monitored convergence, and visualized learning curves.
       batchSize = 35
       nEpochs = 100
       
       # Compile the model
       new_custom_model.compile(optimizer='adam', loss='categorical_crossentropy', metrics=['accuracy'])
       
       # Train the model
       newModel = new_custom_model.fit(X_train, y_train_k, batch_size=batchSize, epochs=nEpochs, verbose=1, validation_data=(X_valid, y_valid_k))

    • Plotted and analyzed the confusion matrix for training, validation, and testing datasets.

      !

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Leveraging advanced image processing and deep learning, this project classifies plant images using a subset of the Plant Seedlings dataset. The dataset includes diverse plant species captured under varying conditions. This project holds significance within my Master's in Computer Vision at uOttawa (2023).

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