Litcius/Paper detail

Investigations of Object Detection in Images/Videos Using Various Deep Learning Techniques and Embedded Platforms—A Comprehensive Review

Chinthakindi Balaram Murthy, Mohammad Farukh Hashmi, Neeraj Dhanraj Bokde, Zong Woo Geem

2020Applied Sciences169 citationsDOIOpen Access PDF

Abstract

In recent years there has been remarkable progress in one computer vision application area: object detection. One of the most challenging and fundamental problems in object detection is locating a specific object from the multiple objects present in a scene. Earlier traditional detection methods were used for detecting the objects with the introduction of convolutional neural networks. From 2012 onward, deep learning-based techniques were used for feature extraction, and that led to remarkable breakthroughs in this area. This paper shows a detailed survey on recent advancements and achievements in object detection using various deep learning techniques. Several topics have been included, such as Viola–Jones (VJ), histogram of oriented gradient (HOG), one-shot and two-shot detectors, benchmark datasets, evaluation metrics, speed-up techniques, and current state-of-art object detectors. Detailed discussions on some important applications in object detection areas, including pedestrian detection, crowd detection, and real-time object detection on Gpu-based embedded systems have been presented. At last, we conclude by identifying promising future directions.

Topics & Concepts

Object detectionComputer scienceArtificial intelligencePedestrian detectionBenchmark (surveying)Deep learningConvolutional neural networkComputer visionViola–Jones object detection frameworkHistogram of oriented gradientsObject (grammar)Object-class detectionHistogramFeature extractionPattern recognition (psychology)Face detectionImage (mathematics)PedestrianGeographyCartographyArchaeologyFacial recognition systemAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAnomaly Detection Techniques and Applications