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Implementation:Zai org CogVideo LatentLPIPS

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Knowledge Sources
Domains Video_Generation, Perceptual_Loss
Last Updated 2026-02-10 00:00 GMT

Overview

Implements a composite loss module that combines latent-space L2 loss with LPIPS perceptual loss computed in decoded image space, enabling training in latent space while optimizing for perceptual quality.

Description

The LatentLPIPS class bridges latent-space training objectives with pixel-space perceptual quality metrics. It computes a weighted combination of:

  1. Latent L2 loss: Direct mean squared error between predicted and target latent representations, weighted by latent_weight.
  2. Decoded perceptual loss: The module maintains a frozen decoder that converts latent predictions and targets back to image space. LPIPS perceptual distance is computed between the decoded images, weighted by perceptual_weight.
  3. Input perceptual loss (optional): When perceptual_weight_on_inputs > 0, an additional LPIPS term compares decoded predictions against original input images. This supports scenarios where the input image resolution differs from the reconstruction resolution, with configurable bicubic rescaling in either direction (scale_input_to_tgt_size or scale_tgt_to_input_size).

The decoder is initialized from a config and has its encoder component removed to save memory, since only decoding is needed for loss computation.

Usage

Used as a training loss for latent diffusion or two-stage autoencoder models where the primary training occurs in latent space but perceptual quality in pixel space must also be optimized. Particularly useful when fine-tuning a latent-space model to better preserve perceptual features visible in decoded outputs.

Code Reference

Source Location

Signature

class LatentLPIPS(nn.Module):
    def __init__(
        self,
        decoder_config,
        perceptual_weight=1.0,
        latent_weight=1.0,
        scale_input_to_tgt_size=False,
        scale_tgt_to_input_size=False,
        perceptual_weight_on_inputs=0.0,
    )

    def init_decoder(self, config)

    def forward(
        self,
        latent_inputs,
        latent_predictions,
        image_inputs,
        split="train",
    ) -> tuple[torch.Tensor, dict]

Import

from sat.sgm.modules.autoencoding.losses.lpips import LatentLPIPS

I/O Contract

Inputs

Name Type Required Description
latent_inputs torch.Tensor Yes Target latent representations [B, C, H, W]
latent_predictions torch.Tensor Yes Predicted latent representations [B, C, H, W]
image_inputs torch.Tensor Yes Original input images [B, 3, H', W'] (used when perceptual_weight_on_inputs > 0)
split str No Log key prefix for loss tracking. Default: "train"

Outputs

Name Type Description
loss torch.Tensor Scalar weighted combination of latent L2 and perceptual losses
log dict Dictionary containing detached loss components: {split}/latent_l2_loss, {split}/perceptual_loss, and optionally {split}/perceptual_loss_on_inputs

Usage Examples

from sat.sgm.modules.autoencoding.losses.lpips import LatentLPIPS

# Initialize with decoder config and loss weights
loss_fn = LatentLPIPS(
    decoder_config={"target": "my_decoder.Decoder", "params": {...}},
    perceptual_weight=1.0,
    latent_weight=0.5,
    perceptual_weight_on_inputs=0.1,
    scale_tgt_to_input_size=True,
)

# Compute composite loss
loss, log_dict = loss_fn(
    latent_inputs=z_target,
    latent_predictions=z_pred,
    image_inputs=original_images,
    split="train",
)
loss.backward()

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