From Noise to Latent: Generating Gaussian Latents for INR-Based Image Compression
PositiveArtificial Intelligence
The recent paper titled 'From Noise to Latent: Generating Gaussian Latents for INR-Based Image Compression' introduces a novel approach to image compression by generating latents directly from Gaussian noise. Traditional INR methods have shown competitive performance but fall short compared to end-to-end (E2E) compression techniques due to their reliance on complex entropy models and the transmission of latent codes. The proposed method utilizes a Gaussian Parameter Prediction (GPP) module to estimate distribution parameters, allowing for one-shot latent generation. This innovation not only simplifies the decoding process but also aims to enhance rate-distortion performance on well-known datasets such as Kodak and CLIC. By eliminating the need for transmitting latent codes, this method represents a significant advancement in learned image compression, potentially paving the way for more efficient and effective compression techniques in the future.
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