To mitigate the burden of data labeling, we aim at improving data efficiency for both classification and regression setups in deep learning. However, the current focus is on classification problems while rare attention has been paid to deep regression, which usually requires more human effort to labeling. Further, due to the intrinsic difference between categorical and continuous label space, the common intuitions for classification, e.g., cluster assumptions or pseudo labeling strategies, cannot be naturally adapted into deep regression. To this end, we first delved into the existing data-efficient methods in deep learning and found that they either encourage invariance to data stochasticity (e.g., consistency regularization under different augmentations) or model stochasticity (e.g., difference penalty for predictions of models with different dropout). To take the power of both worlds, we propose a novel X-model by simultaneously encouraging the invariance to {data stochasticity} and {model stochasticity}. Further, the X-model plays a minimax game between the feature extractor and task-specific heads to further enhance the invariance to model stochasticity. Extensive experiments verify the superiority of the X-model among various tasks, from a single-value prediction task of age estimation to a dense-value prediction task of keypoint localization, a 2D synthetic, and a 3D realistic dataset, as well as a multi-category object recognition task.
翻译:为了减轻数据标签的负担,我们的目标是提高分类和深层学习回归集成的数据效率,然而,目前的重点是分类问题,而很少注意深度回归,这通常需要更多人的努力来标记。此外,由于绝对标签空间和连续标签空间之间的内在差异,分类的共同直觉,例如群集假设或假标签战略等,不能自然地适应到深层回归。为此,我们首先进入了深层学习中现有的数据效率方法,发现它们要么鼓励对数据精确性(例如,不同扩增下的一致性规范)或模型随机性(例如,对不同辍学模型预测的不同罚款)。为了掌握这两个世界的力量,我们建议采用一个新的X型模型,同时鼓励对{数据偏差度}和{模型偏差性}。此外,X型模型在地貌提取和任务类型前头之间玩一个微小游戏,以进一步加强从高端预测到高端预测的高度模型,从高端预测到高端预测,从高端预测的模型,从高端预测,从高端预测到高端预测,从高端分析任务,从高端预测到高端预测,从高端预测,从高端预测到高端分析任务。