P Wang, Q Chen, X He… - … Conference on Machine …, 2020 - proceedings.mlr.press
Network quantization is essential for deploying deep models to IoT devices due to its high efficiency. Most existing quantization approaches rely on the full training datasets and the …
Network binarization emerges as one of the most promising compression approaches offering extraordinary computation and memory savings by minimizing the bit-width …
Recently, a number of classification techniques have been introduced. However, processing large dataset in a reasonable time has become a major challenge. This made classification …
Abstract Model binarization is an effective method of compressing neural networks and accelerating their inference process, which enables state-of-the-art models to run on …
Y Liu, MK Ng - Knowledge-Based Systems, 2022 - Elsevier
Deep neural networks have shown impressive performance in many areas, including computer vision and natural language processing. Millions of parameters in deep neural …
Binarization of feature representation is critical for Binarized Neural Networks (BNNs). Currently, sign function is the commonly used method for feature binarization. Although it …
Deep neural networks have shown great promise in various domains. Meanwhile, problems including the storage and computing overheads arise along with these breakthroughs. To …
Energy efficiency is critical for running computer vision on battery-powered systems, such as mobile phones or UAVs (unmanned aerial vehicles, or drones). This book collects the …
Deep neural networks have achieved impressive results in computer vision and machine learning. Unfortunately, state-of-the-art networks are extremely compute and memory …