Class FILM<T>
- Namespace
- AiDotNet.Video.FrameInterpolation
- Assembly
- AiDotNet.dll
FILM (Frame Interpolation for Large Motion) model for high-quality frame interpolation.
public class FILM<T> : NeuralNetworkBase<T>, INeuralNetworkModel<T>, INeuralNetwork<T>, IFullModel<T, Tensor<T>, Tensor<T>>, IModel<Tensor<T>, Tensor<T>, ModelMetadata<T>>, IModelSerializer, ICheckpointableModel, IParameterizable<T, Tensor<T>, Tensor<T>>, IFeatureAware, IFeatureImportance<T>, ICloneable<IFullModel<T, Tensor<T>, Tensor<T>>>, IGradientComputable<T, Tensor<T>, Tensor<T>>, IJitCompilable<T>, IInterpretableModel<T>, IInputGradientComputable<T>, IDisposable
Type Parameters
TThe numeric type used for calculations (e.g., float, double).
- Inheritance
-
FILM<T>
- Implements
- Inherited Members
- Extension Methods
Remarks
For Beginners: FILM generates smooth intermediate frames between two input frames, even when there's significant motion between them. It's particularly good at: - Large motion scenes (fast camera movements, rapid object motion) - Creating slow-motion effects from regular video - Increasing video frame rate (24fps to 60fps) - Smooth transitions between keyframes
Unlike older methods that struggle with large motions, FILM uses a multi-scale feature extraction approach that handles both small and large movements gracefully.
Technical Details: - Multi-scale feature pyramid for handling large motions - Bi-directional flow estimation with occlusion handling - Feature-based frame synthesis (not just flow warping) - Scale-agnostic architecture for arbitrary resolution
Reference: Reda et al., "FILM: Frame Interpolation for Large Motion" ECCV 2022.
Constructors
FILM(NeuralNetworkArchitecture<T>, int, int)
Initializes a new instance of the FILM class.
public FILM(NeuralNetworkArchitecture<T> architecture, int numScales = 7, int numFeatures = 64)
Parameters
architectureNeuralNetworkArchitecture<T>The neural network architecture configuration.
numScalesintNumber of pyramid scales for multi-scale processing.
numFeaturesintBase number of feature channels.
Properties
SupportsTraining
Gets whether training is supported.
public override bool SupportsTraining { get; }
Property Value
Methods
CreateNewInstance()
Creates a new instance of the same type as this neural network.
protected override IFullModel<T, Tensor<T>, Tensor<T>> CreateNewInstance()
Returns
- IFullModel<T, Tensor<T>, Tensor<T>>
A new instance of the same neural network type.
Remarks
For Beginners: This creates a blank version of the same type of neural network.
It's used internally by methods like DeepCopy and Clone to create the right type of network before copying the data into it.
CreateSlowMotion(List<Tensor<T>>, int)
Creates slow-motion effect from video frames.
public List<Tensor<T>> CreateSlowMotion(List<Tensor<T>> frames, int slowdownFactor = 4)
Parameters
framesList<Tensor<T>>Input video frames.
slowdownFactorintSlowdown factor (2 = half speed, 4 = quarter speed).
Returns
- List<Tensor<T>>
Slow-motion video frames.
DeserializeNetworkSpecificData(BinaryReader)
Deserializes network-specific data that was not covered by the general deserialization process.
protected override void DeserializeNetworkSpecificData(BinaryReader reader)
Parameters
readerBinaryReaderThe BinaryReader to read the data from.
Remarks
This method is called at the end of the general deserialization process to allow derived classes to read any additional data specific to their implementation.
For Beginners: Continuing the suitcase analogy, this is like unpacking that special compartment. After the main deserialization method has unpacked the common items (layers, parameters), this method allows each specific type of neural network to unpack its own unique items that were stored during serialization.
GetModelMetadata()
Gets the metadata for this neural network model.
public override ModelMetadata<T> GetModelMetadata()
Returns
- ModelMetadata<T>
A ModelMetaData object containing information about the model.
IncreaseFrameRate(List<Tensor<T>>, int)
Increases video frame rate by a given factor.
public List<Tensor<T>> IncreaseFrameRate(List<Tensor<T>> frames, int factor = 2)
Parameters
framesList<Tensor<T>>Input video frames.
factorintFrame rate multiplication factor (2, 4, or 8).
Returns
- List<Tensor<T>>
Frame rate enhanced video.
InitializeLayers()
Initializes the layers of the neural network based on the architecture.
protected override void InitializeLayers()
Remarks
For Beginners: This method sets up all the layers in your neural network according to the architecture you've defined. It's like assembling the parts of your network before you can use it.
Interpolate(Tensor<T>, Tensor<T>, double)
Interpolates a frame between two input frames.
public Tensor<T> Interpolate(Tensor<T> frame1, Tensor<T> frame2, double timestep = 0.5)
Parameters
frame1Tensor<T>First input frame [C, H, W] or [B, C, H, W].
frame2Tensor<T>Second input frame [C, H, W] or [B, C, H, W].
timestepdoubleInterpolation position (0.0 = frame1, 1.0 = frame2, 0.5 = middle).
Returns
- Tensor<T>
Interpolated frame at the specified timestep.
InterpolateMultiple(Tensor<T>, Tensor<T>, int)
Generates multiple intermediate frames between two input frames.
public List<Tensor<T>> InterpolateMultiple(Tensor<T> frame1, Tensor<T> frame2, int numIntermediateFrames)
Parameters
frame1Tensor<T>First input frame.
frame2Tensor<T>Second input frame.
numIntermediateFramesintNumber of frames to generate.
Returns
- List<Tensor<T>>
List of interpolated frames (excluding input frames).
Predict(Tensor<T>)
Makes a prediction using the neural network.
public override Tensor<T> Predict(Tensor<T> input)
Parameters
inputTensor<T>The input data to process.
Returns
- Tensor<T>
The network's prediction.
Remarks
For Beginners: This is the main method you'll use to get results from your trained neural network. You provide some input data (like an image or text), and the network processes it through all its layers to produce an output (like a classification or prediction).
SerializeNetworkSpecificData(BinaryWriter)
Serializes network-specific data that is not covered by the general serialization process.
protected override void SerializeNetworkSpecificData(BinaryWriter writer)
Parameters
writerBinaryWriterThe BinaryWriter to write the data to.
Remarks
This method is called at the end of the general serialization process to allow derived classes to write any additional data specific to their implementation.
For Beginners: Think of this as packing a special compartment in your suitcase. While the main serialization method packs the common items (layers, parameters), this method allows each specific type of neural network to pack its own unique items that other networks might not have.
Train(Tensor<T>, Tensor<T>)
Trains the neural network on a single input-output pair.
public override void Train(Tensor<T> input, Tensor<T> expectedOutput)
Parameters
inputTensor<T>The input data.
expectedOutputTensor<T>The expected output for the given input.
Remarks
This method performs one training step on the neural network using the provided input and expected output. It updates the network's parameters to reduce the error between the network's prediction and the expected output.
For Beginners: This is how your neural network learns. You provide: - An input (what the network should process) - The expected output (what the correct answer should be)
The network then:
- Makes a prediction based on the input
- Compares its prediction to the expected output
- Calculates how wrong it was (the loss)
- Adjusts its internal values to do better next time
After training, you can get the loss value using the GetLastLoss() method to see how well the network is learning.
UpdateParameters(Vector<T>)
Updates the network's parameters with new values.
public override void UpdateParameters(Vector<T> parameters)
Parameters
parametersVector<T>The new parameter values to set.
Remarks
For Beginners: During training, a neural network's internal values (parameters) get adjusted to improve its performance. This method allows you to update all those values at once by providing a complete set of new parameters.
This is typically used by optimization algorithms that calculate better parameter values based on training data.