Modality selection is an important step when designing multimodal systems, especially in the case of cross-domain activity recognition as certain modalities are more robust to domain shift than others. However, selecting only the modalities which have a positive contribution requires a systematic approach. We tackle this problem by proposing an unsupervised modality selection method (ModSelect), which does not require any ground-truth labels. We determine the correlation between the predictions of multiple unimodal classifiers and the domain discrepancy between their embeddings. Then, we systematically compute modality selection thresholds, which select only modalities with a high correlation and low domain discrepancy. We show in our experiments that our method ModSelect chooses only modalities with positive contributions and consistently improves the performance on a Synthetic-to-Real domain adaptation benchmark, narrowing the domain gap.
翻译:模式选择是设计多式联运系统的一个重要步骤,特别是在跨域活动确认方面,因为某些模式比其他模式更适于领域转移。然而,只选择具有积极贡献的模式需要系统化的方法。我们通过提出一种不受监督的模式选择方法(ModSelect)来解决这一问题,该方法不需要任何地面真相标签。我们确定多个单一模式分类者的预测与其嵌入的域差之间的相互关系。然后,我们系统地计算模式选择阈值,只选择具有高度相关性和低域差异的模式。我们在实验中显示,我们的模式选择方法只选择有积极贡献的模式,并不断改进合成和实时域适应基准的绩效,缩小领域差距。