PROJECT TITLE :

Parallel very large-scale integration chip implementation of optimal fractional motion estimation

ABSTRACT:

Fractional motion estimation (ME) is commonly employed to improve motion compensation in video coding. However, the computational complexity is generally too high for real-time applications. This study proposes an efficient quarter-pixel estimation method implemented at both the algorithm and architecture levels. This approach to rapid estimation adopts a local full-search method to reduce the computational requirements while maintaining coding quality. We also developed a fast sub-pixel interpolation and parallel very large-scale integration (VLSI) architecture for quarter estimation to enhance processing speed. The overall VLSI architecture was developed for the estimation of fractional motion using a cell-based design. Three engines were implemented within a parallel structure: integer ME, sub-pixel interpolation and factional ME. The inclusion of pipeline scheduling enables the processing of one macro-block within 240 cycles. The gate count was ~316 k and the maximum frequency was ~160 MHz when implemented using Taiwan Semiconductor Manufacture Company 0.18 μm complementary metal oxide semiconductor process. The proposed chip achieved a throughput-rate of 662 k blocks per second.


Did you like this research project?

To get this research project Guidelines, Training and Code... Click Here

PROJECT TITLE : Parallel Fractional Hot-Deck Imputation and Variance Estimation for Big Incomplete Data Curing ABSTRACT: The fractional hot-deck imputation, also known as FHDI, is a method for handling multivariate missing data
PROJECT TITLE : Large Scale Tensor Factorization via Parallel Sketches ABSTRACT: In recent years, tensor factorization methods have seen a rise in their level of popularity. Tensors are appealing for a number of reasons, one of
PROJECT TITLE : Scheduling Real-Time Parallel Applications in Cloud to Minimize Energy Consumption ABSTRACT: The concept of cloud computing has emerged as an important paradigm in recent years. Cloud computing enables users to
PROJECT TITLE : PPD: A Scalable and Efficient Parallel Primal-Dual Coordinate Descent Algorithm ABSTRACT: One of the most common approaches to optimization is called Dual Coordinate Descent, or DCD for short. Due to the sequential
PROJECT TITLE : Parallel Attentive Correlation Tracking ABSTRACT: There is evidence to suggest that visual attention and selection in humans may be processed in simultaneously, based on psychological and cognitive results. This