Abstract :
Recently, methods with learning procedure have been widely used to solve person re-identification (re-id) problem. However, most existing databases for re-id are smallscale, therefore, over-fitting is likely to occur. To further improve the performance, we propose a novel method by fusing multiple local features and exploring their structural information on different levels. The proposed method is called Structural Constraints Enhanced Feature Accumulation (SCEFA). Three local features (i.e., Hierarchical Weighted Histograms (HWH), Gabor Ternary Pattern HSV (GTP-HSV), Maximally Stable Color Regions (MSCR)) are used. Structural information of these features are deeply explored in three levels: pixel, blob, and part. The matching algorithms corresponding to the features are also discussed. Extensive experiments conducted on three datasets: VIPeR, ETHZ and our own challenging dataset MCSSH, show that our approach outperforms stat-of-the-art methods significantly.
Keywords :
feature extraction; image fusion; image matching; learning (artificial intelligence); video surveillance; ETHZ dataset; GTP-HSV; Gabor ternary pattern HSV; HWH; MCSSH dataset; MSCR; SCEFA; VIPeR dataset; blob level; hierarchical weighted histograms; learning procedure; matching algorithms; maximally stable color regions; multiple local feature fusion; part level; person re-identification; pixel level; structural constraints enhanced feature accumulation; structural information; video surveillance scenarios; Cameras; Detectors; Feature extraction; Histograms; Image color analysis; Probes; Vectors;