STanH: Parametric Quantization for Variable Rate Learned Image Compression

Abstract

In end-to-end learned image compression, encoder and decoder are jointly trained to minimize a R + λ D cost function, where λ controls the trade-off between rate of the quantized latent representation and image quality. Unfortunately, a distinct encoder-decoder pair with millions of parameters must be trained for each λ, hence the need to switch encoders and to store multiple encoders and decoders on the user device for every target rate. This paper proposes to exploit a differentiable quantizer designed around a parametric sum of hyperbolic tangents, called STanH, that relaxes the step-wise quantization function. STanH is implemented as a differentiable activation layer with learnable quantization parameters that can be plugged into a pre-trained fixed rate model and refined to achieve different target bitrates. Experimental results show that our method enables variable rate coding with comparable efficiency to the state-of-the-art, yet with significant savings in terms of ease of deployment, training time, and storage costs. © 1992-2012 IEEE.

Publication
IEEE Transactions on Image Processing
Alberto Presta
Alberto Presta
Former member
Attilio Fiandrotti
Attilio Fiandrotti
Associate Professor
Marco Grangetto
Marco Grangetto
Full Professor