Deep learning based object detection for resource constrained devices: Systematic review, future trends and challenges ahead

V Kamath, A Renuka - Neurocomputing, 2023 - Elsevier
Deep learning models are widely being employed for object detection due to their high
performance. However, the majority of applications that require object detection are …

A comprehensive survey of deep learning-based lightweight object detection models for edge devices

P Mittal - Artificial Intelligence Review, 2024 - Springer
This study concentrates on deep learning-based lightweight object detection models on
edge devices. Designing such lightweight object recognition models is more difficult than …

SMD-YOLO: An efficient and lightweight detection method for mask wearing status during the COVID-19 pandemic

Z Han, H Huang, Q Fan, Y Li, Y Li, X Chen - Computer methods and …, 2022 - Elsevier
Abstract Background and Objective At present, the COVID-19 epidemic is still spreading
worldwide and wearing a mask in public areas is an effective way to prevent the spread of …

Object detection in traffic videos: A survey

H Ghahremannezhad, H Shi… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Traffic video analytics has become one of the core components in the evolution of
transportation systems. Artificially intelligent traffic management systems apply computer …

Design of citrus fruit detection system based on mobile platform and edge computer device

H Huang, T Huang, Z Li, S Lyu, T Hong - Sensors, 2021 - mdpi.com
Citrus fruit detection can provide technical support for fine management and yield
determination of citrus orchards. Accurate detection of citrus fruits in mountain orchards is …

[HTML][HTML] Benchmarking edge computing devices for grape bunches and trunks detection using accelerated object detection single shot multibox deep learning models

SC Magalhães, FN dos Santos, P Machado… - … Applications of Artificial …, 2023 - Elsevier
Purpose: Visual perception enables robots to perceive the environment. Visual data is
processed using computer vision algorithms that are usually time-expensive and require …

SGA-Net: Self-constructing graph attention neural network for semantic segmentation of remote sensing images

W Zi, W Xiong, H Chen, J Li, N Jing - Remote Sensing, 2021 - mdpi.com
Semantic segmentation of remote sensing images is always a critical and challenging task.
Graph neural networks, which can capture global contextual representations, can exploit …

E-TBNet: Light Deep Neural Network for automatic detection of tuberculosis with X-ray DR Imaging

L An, K Peng, X Yang, P Huang, Y Luo, P Feng, B Wei - Sensors, 2022 - mdpi.com
Currently, the tuberculosis (TB) detection model based on chest X-ray images has the
problem of excessive reliance on hardware computing resources, high equipment …

DRE-Net: A dynamic radius-encoding neural network with an incremental training strategy for interactive segmentation of remote sensing images

L Yang, W Zi, H Chen, S Peng - Remote Sensing, 2023 - mdpi.com
Semantic segmentation of remote sensing (RS) images, which is a fundamental research
topic, classifies each pixel in an image. It plays an essential role in many downstream RS …

TTIS-YOLO: a traffic target instance segmentation paradigm for complex road scenarios

W Xia, P Li, Q Li, T Yang, S Zhang - Measurement Science and …, 2024 - iopscience.iop.org
The instance segmentation of traffic targets in complex road scenes is one of the most
challenging tasks in autonomous driving. Unlike the bounding box localization for object …