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Layer type | |
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Dense
Fully connected layer, the simplest form of a neural network layer.
Use this for processed data, such as the output of a spectral analysis DSP block.
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1D Convolution / pooling
Learn features that take spatial information into account along a single dimension.
Use this for raw data, or for DSP blocks that output spatial data, such as the MFCC block.
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2D Convolution / pooling
Learn features that take spatial information into account along two dimensions.
Use this for raw data, or for DSP blocks that output spatial data, such as the MFCC block.
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Reshape
Turn one-dimensional data from a DSP block into multi-dimensional data.
Use this as an input to a convolutional layer.
Use this for deep learning on raw data, or to process MFCC output.
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Flatten
Flatten multi-dimensional data into a single dimension.
You need to flatten data from a convolutional layer before returning.
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Dropout
Reduce the risk of a model overfitting your dataset by randomly cutting a fraction
of network connections during training. Can be helpful if your model's training performance
is better than its validation performance.
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Model | Author | |
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LGBM Random Forest Classifier
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Edge Impulse Inc. | |
XGBoost Random Forest Classifier
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Edge Impulse Inc. | |
SVM Classifier
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Edge Impulse Inc. | |
Random Forest Classifier
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Edge Impulse Inc. | |
Logistic Regression
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Edge Impulse Inc. | |
Ridge Classifier
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Edge Impulse Inc. | |
RidgeCV Classifier
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Edge Impulse Inc. |
Description | Author | |
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EfficientNet V2B0
Supports both RGB and grayscale.
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Edge Impulse |
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MobileNetV2 0.35
Supports both RGB and grayscale.
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Edge Impulse |
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MobileNetV2 0.50
Supports both RGB and grayscale.
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Edge Impulse |
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MobileNetV2 0.75
Supports both RGB and grayscale.
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Edge Impulse |
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MobileNetV2 1.0
Supports both RGB and grayscale.
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Edge Impulse |
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MobileNetV2 0.1
Supports both RGB and grayscale.
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Edge Impulse |
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Description | Author | Recommended | |
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LGBM Random Forest Classifier
The LightGBM Random Forest Classifier is an efficient, gradient-boosting framework that builds multiple decision trees in parallel for robust and scalable classification tasks.
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Edge Impulse |
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XGBoost Random Forest Classifier
The XGBoost Random Forest Classifier leverages the strengths of both gradient boosting and random forest methodologies to provide a powerful, efficient, and scalable solution for classification tasks.
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Edge Impulse |
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SVM Classifier
The scikit-learn SVM classifier is a powerful algorithm that constructs a hyperplane or set of hyperplanes in a high-dimensional space for classification, effectively handling both linear and non-linear data.
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Edge Impulse |
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Random Forest Classifier
The scikit-learn Random Forest Classifier is a versatile machine learning algorithm that builds multiple decision trees and merges their predictions for robust and accurate classification.
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Edge Impulse |
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Logistic Regression
The scikit-learn Logistic Regressor is a linear model for classification that estimates probabilities using a logistic function, effectively handling binary and multiclass classification tasks.
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Edge Impulse |
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Ridge Classifier
The scikit-learn Ridge classifier employs L2 regularization to optimize a linear classification model, mitigating overfitting by penalizing large coefficients, thereby enhancing model generalizability across diverse datasets.
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Edge Impulse |
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RidgeCV Classifier
The scikit-learn RidgeCV classifier is a linear regression model with built-in cross-validation that applies ridge regularization to prevent overfitting and improve prediction accuracy.
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Edge Impulse |
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