Fine-grained classification aims at distinguishing between items with similar global perception and patterns, but that differ by minute details. Our primary challenges come from both small inter-class variations and large intra-class variations. In this article, we propose to combine several innovations to improve fine-grained classification within the use-case of wildlife, which is of practical interest for experts. We utilize geo-spatiotemporal data to enrich the picture information and further improve the performance. We also investigate state-of-the-art methods for handling the imbalanced data issue.
翻译:精细分类旨在区分具有类似全球认知和模式但因细小细节而异的物品,我们面临的主要挑战来自小类间差异和大类内差异。在本条中,我们提议将若干创新结合起来,改进使用野生动物情况下的精细分类,这是专家们实际感兴趣的。我们利用地理空间数据来丰富图片信息并进一步改进性能。我们还调查处理不平衡数据问题的最新方法。