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Synthetic Examples Improve Generalization for Rare Classes

机译:综合示例提高了稀有类的通用性

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The ability to detect and classify rare occurrences in images has important applications – for example, counting rare and endangered species when studying biodiversity, or detecting infrequent traffic scenarios that pose a danger to self-driving cars. Few-shot learning is an open problem: current computer vision systems struggle to categorize objects they have seen only rarely during training, and collecting a sufficient number of training examples of rare events is often challenging and expensive, and sometimes outright impossible. We explore in depth an approach to this problem: complementing the few available training images with ad-hoc simulated data.Our testbed is animal species classification, which has a real-world long-tailed distribution. We present two natural world simulators, and analyze the effect of different axes of variation in simulation, such as pose, lighting, model, and simulation method, and we prescribe best practices for efficiently incorporating simulated data for real-world performance gain. Our experiments reveal that synthetic data can considerably reduce error rates for classes that are rare, that as the amount of simulated data is increased, accuracy on the target class improves, and that high variation of simulated data provides maximum performance gain.
机译:检测和分类图像中的稀有事件的能力具有重要的应用-例如,在研究生物多样性时对稀有和濒危物种进行计数,或者检测对自动驾驶汽车构成危险的不频繁交通情况。快速学习是一个开放的问题:当前的计算机视觉系统很难对他们在训练中很少见到的物体进行分类,而收集足够数量的罕见事件的训练实例通常具有挑战性且昂贵,有时甚至是完全不可能的。我们深入探讨了解决此问题的方法:用临时模拟数据补充少量可用的训练图像。我们的试验床是动物物种分类,具有真实的长尾分布。我们提供了两个自然世界模拟器,并分析了模拟中不同轴的变化的影响,例如姿势,照明,模型和模拟方法,并规定了最佳实践,可以有效地合并模拟数据以提高实际性能。我们的实验表明,对于罕见的类,合成数据可以显着降低错误率;随着模拟数据量的增加,目标类的准确性也将提高;模拟数据的高变化可提供最大的性能提升。

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