Locality Preserving Clustering for Image Database
نویسندگان
چکیده
منابع مشابه
Time Series Clustering Ensemble Algorithm Based on Locality Preserving Projection
The time series clustering is one of the important research contents in the time series data mining. Since the dimension of time series is common high, the performance of direct raw time series data clustering is not ideal. How to improve the clustering performance of time series is the main research point of this paper. Firstly, use Locality Preserving Projection (LPP) to time series samples f...
متن کاملLocality preserving dictionaries: theory & application to clustering in databases
We discuss strategies for building locality preserving dictionaries (LPDs) in which all data items within a range lie together , within a space that is a small function of the number of items in the range. We describe an approach where the memory space is partitioned and items are placed in sorted order, with judiciously placed gaps between them, resulting in eecient insert, delete, and search ...
متن کاملUnsupervised Robust Clustering for Image Database Categorization
Content-based image retrieval can be dramatically improved by providing a good initial database overview to the user. To address this issue, we present in this paper the Adaptive Robust Competition. This algorithm relies on a non-supervised database categorization, coupled with a selection of prototypes in each resulting category. In our approach, each image is represented by a high-dimensional...
متن کاملFace Image Superresolution via Locality Preserving Projection and Sparse Coding
It is important to enhance the resolution of face images from video surveillance for recognization and other post processing. In this paper, a novel sparse representation based face image superresolution (SR) method is proposed to reconstruct a high resolution (HR) face image from a LR observation. First, it gets a HR-LR dictionary pair for certain input LR patch via position patch clustering a...
متن کاملLocality Preserving Feature Learning
Locality Preserving Indexing (LPI) has been quite successful in tackling document analysis problems, such as clustering or classification. The approach relies on the Locality Preserving Criterion, which preserves the locality of the data points. However, LPI takes every word in a data corpus into account, even though many words may not be useful for document clustering. To overcome this problem...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
ژورنال
عنوان ژورنال: Journal of Computer Research and Development
سال: 2006
ISSN: 1000-1239
DOI: 10.1360/crad20060314