Learning Multiple Pixelwise Tasks Based on Loss Scale Balancing

Jae-Han Lee, Chulwoo Lee, Chang-Su Kim
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引用次数: 7

Abstract

We propose a novel loss weighting algorithm, called loss scale balancing (LSB), for multi-task learning (MTL) of pixelwise vision tasks. An MTL model is trained to estimate multiple pixelwise predictions using an overall loss, which is a linear combination of individual task losses. The proposed algorithm dynamically adjusts the linear weights to learn all tasks effectively. Instead of controlling the trend of each loss value directly, we balance the loss scale — the product of the loss value and its weight — periodically. In addition, by evaluating the difficulty of each task based on the previous loss record, the proposed algorithm focuses more on difficult tasks during training. Experimental results show that the proposed algorithm outperforms conventional weighting algorithms for MTL of various pixelwise tasks. Codes are available at https://github.com/jaehanlee-mcl/LSB-MTL.
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基于损失尺度平衡的多像素任务学习
针对像素级视觉任务的多任务学习,提出了一种新的损失加权算法——损失尺度平衡(LSB)。MTL模型被训练成使用整体损失(单个任务损失的线性组合)来估计多个像素级预测。该算法动态调整线性权值,有效学习所有任务。我们不是直接控制每个损失值的趋势,而是周期性地平衡损失规模——损失值与其权重的乘积。此外,基于之前的损失记录对每个任务的难度进行评估,使算法更加关注训练过程中较难的任务。实验结果表明,对于各种像素级任务的MTL,该算法优于传统的加权算法。代码可在https://github.com/jaehanlee-mcl/LSB-MTL上获得。
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