81,162 research outputs found
An Efficient Codebook Initialization Approach for LBG Algorithm
In VQ based image compression technique has three major steps namely (i)
Codebook Design, (ii) VQ Encoding Process and (iii) VQ Decoding Process. The
performance of VQ based image compression technique depends upon the
constructed codebook. A widely used technique for VQ codebook design is the
Linde-Buzo-Gray (LBG) algorithm. However the performance of the standard LBG
algorithm is highly dependent on the choice of the initial codebook. In this
paper, we have proposed a simple and very effective approach for codebook
initialization for LBG algorithm. The simulation results show that the proposed
scheme is computationally efficient and gives expected performance as compared
to the standard LBG algorithm
A Review of Codebook Models in Patch-Based Visual Object Recognition
The codebook model-based approach, while ignoring any structural aspect in vision, nonetheless provides state-of-the-art performances on current datasets. The key role of a visual codebook is to provide a way to map the low-level features into a fixed-length vector in histogram space to which standard classifiers can be directly applied. The discriminative power of such a visual codebook determines the quality of the codebook model, whereas the size of the codebook controls the complexity of the model. Thus, the construction of a codebook is an important step which is usually done by cluster analysis. However, clustering is a process that retains regions of high density in a distribution and it follows that the resulting codebook need not have discriminant properties. This is also recognised as a computational bottleneck of such systems. In our recent work, we proposed a resource-allocating codebook, to constructing a discriminant codebook in a one-pass design procedure that slightly outperforms more traditional approaches at drastically reduced computing times. In this review we survey several approaches that have been proposed over the last decade with their use of feature detectors, descriptors, codebook construction schemes, choice of classifiers in recognising objects, and datasets that were used in evaluating the proposed methods
One-pass adaptive universal vector quantization
The authors introduce a one-pass adaptive universal quantization technique for real, bounded alphabet, stationary sources. The algorithm is set on line without any prior knowledge of the statistics of the sources which it might encounter and asymptotically achieves ideal performance on all sources that it sees. The system consists of an encoder and a decoder. At increasing intervals, the encoder refines its codebook using knowledge about incoming data symbols. This codebook is then described to the decoder in the form of updates on the previous codebook. The accuracy to which the codebook is described increases as the number of symbols seen, and thus the accuracy to which the codebook is known, grows
An iterative joint codebook and classifier improvement algorithm for finite-state vector quantization
A finite-state vector quantizer (FSVQ) is a multicodebook system in, which the current state (or codebook) is chosen as a function of the previously quantized vectors. The authors introduce a novel iterative algorithm for joint codebook and next state function design of full search finite-state vector quantizers. They consider the fixed-rate case, for which no optimal design strategy is known. A locally optimal set of codebooks is designed for the training data and then predecessors to the training vectors associated with each codebook are appropriately labelled and used in designing the classifier. The algorithm iterates between next state function and state codebook design until it arrives at a suitable solution. The proposed design consistently yields better performance than the traditional FSVQ design method (under identical state space and codebook constraints)
The Necessity of Relay Selection
We determine necessary conditions on the structure of symbol error rate (SER)
optimal quantizers for limited feedback beamforming in wireless networks with
one transmitter-receiver pair and R parallel amplify-and-forward relays. We
call a quantizer codebook "small" if its cardinality is less than R, and
"large" otherwise. A "d-codebook" depends on the power constraints and can be
optimized accordingly, while an "i-codebook" remains fixed. It was previously
shown that any i-codebook that contains the single-relay selection (SRS)
codebook achieves the full-diversity order, R. We prove the following:
Every full-diversity i-codebook contains the SRS codebook, and thus is
necessarily large. In general, as the power constraints grow to infinity, the
limit of an optimal large d-codebook contains an SRS codebook, provided that it
exists. For small codebooks, the maximal diversity is equal to the codebook
cardinality. Every diversity-optimal small i-codebook is an orthogonal
multiple-relay selection (OMRS) codebook. Moreover, the limit of an optimal
small d-codebook is an OMRS codebook.
We observe that SRS is nothing but a special case of OMRS for codebooks with
cardinality equal to R. As a result, we call OMRS as "the universal necessary
condition" for codebook optimality. Finally, we confirm our analytical findings
through simulations.Comment: 29 pages, 4 figure
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