In this paper, pelage pattern matching is considered to solve the individual re-identification of the Saimaa ringed seals. Animal re-identification together with the access to large amount of image material through camera traps and crowd-sourcing provide novel possibilities for animal monitoring and conservation. We propose a novel feature pooling approach that allow aggregating the local pattern features to get a fixed size embedding vector that incorporate global features by taking into account the spatial distribution of features. This is obtained by eigen decomposition of covariances computed for probability mass functions representing feature maps. Embedding vectors can then be used to find the best match in the database of known individuals allowing animal re-identification. The results show that the proposed pooling method outperforms the existing methods on the challenging Saimaa ringed seal image data.
翻译:本文认为,排卵图案匹配可解决Saimaa环斑海豹的个人再识别问题; 动物再识别,以及通过摄像陷阱和众包获取大量图像材料,为动物监测和养护提供了新的可能性; 我们提出一种新的特征集合办法,将本地模式特征集中在一起,以获得固定尺寸嵌入矢量,纳入全球特征,同时考虑到地貌的空间分布; 这是通过对代表地貌图的概率质量函数计算出的共差分解获得的; 然后,嵌入矢量可以用来在已知允许动物再识别的个人数据库中找到最佳匹配点; 结果表明,拟议的集合方法超过了挑战性Saimaaa环斑海豹图像数据的现有方法。