کد مقاله | کد نشریه | سال انتشار | مقاله انگلیسی | نسخه تمام متن |
---|---|---|---|---|
536015 | 870429 | 2011 | 9 صفحه PDF | دانلود رایگان |

Learning a compact and yet discriminative codebook is an important procedure for local feature-based action recognition. A common procedure involves two independent phases: reducing the dimensionality of local features and then performing clustering. Since the two phases are disconnected, dimensionality reduction does not necessarily capture the dimensions that are greatly helpful for codebook creation. What’s more, some dimensionality reduction techniques such as the principal component analysis do not take class separability into account and thus may not help build an effective codebook. In this paper, we propose the weighted adaptive metric learning (WAML) which integrates the two independent phases into a unified optimization framework. This framework enables to select indispensable and crucial dimensions for building a discriminative codebook. The dimensionality reduction phase in the WAML is optimized for class separability and adaptively adjusts the distance metric to improve the separability of data. In addition, the video word weighting is smoothly incorporated into the WAML to accurately generate video words. Experimental results demonstrate that our approach builds a highly discriminative codebook and achieves comparable results to other state-of-the-art approaches.
► The unified framework of dimensionality reduction and clustering greatly improves the discriminative power of codebook.
► The using of video word ambiguity provides more accurate action primitives.
► Our method adaptively selects dimensions which are indispensable and crucial for building a discriminative codebook.
► Dimensionality reduction phase in our framework is optimized for class separability and help the clustering phase to build high quality clusters.
Journal: Pattern Recognition Letters - Volume 32, Issue 8, 1 June 2011, Pages 1178–1186