论文标题
损坏压缩和扭曲约束优化
Lossy Compression with Distortion Constrained Optimization
论文作者
论文摘要
当训练端到端学习有损压缩的模型时,必须平衡速率和失真损失。这通常是通过手动设置权衡参数$β$的方法来完成的,这种方法称为$β$ -VAE。使用这种方法,很难针对特定的速率或失真值,因为结果可能对$β$非常敏感,并且$β$的适当值取决于模型和问题设置。结果,模型比较需要广泛的每种模型$β$ uning,并产生整个速率延伸曲线(通过改变$β$),以使每个模型进行比较。我们认为,Rezende和Viola的受限优化方法2018更适合训练有损压缩模型,因为它使我们能够获得受扭曲约束的最佳速率。通过训练两个具有相同失真目标的模型并比较它们的速率,这使得模型比较可以进行比较。我们表明,该方法确实可以满足对现实图像压缩任务的约束,优于基于铰链损坏的约束优化方法,并且比$β$ -VAE更实用。
When training end-to-end learned models for lossy compression, one has to balance the rate and distortion losses. This is typically done by manually setting a tradeoff parameter $β$, an approach called $β$-VAE. Using this approach it is difficult to target a specific rate or distortion value, because the result can be very sensitive to $β$, and the appropriate value for $β$ depends on the model and problem setup. As a result, model comparison requires extensive per-model $β$-tuning, and producing a whole rate-distortion curve (by varying $β$) for each model to be compared. We argue that the constrained optimization method of Rezende and Viola, 2018 is a lot more appropriate for training lossy compression models because it allows us to obtain the best possible rate subject to a distortion constraint. This enables pointwise model comparisons, by training two models with the same distortion target and comparing their rate. We show that the method does manage to satisfy the constraint on a realistic image compression task, outperforms a constrained optimization method based on a hinge-loss, and is more practical to use for model selection than a $β$-VAE.