Home /Research /Object Detection Using Convolutional Neural Networks
PERCEPTION

Object Detection Using Convolutional Neural Networks

Reagan L. Galvez, Argel A. Bandala, Elmer P. Dadios, Ryan Rhay P. Vicerra, Jose Martin Z. Maningo

Year
2018
Citations
303

Abstract

Vision systems are essential in building a mobile robot that will complete a certain task like navigation, surveillance, and explosive ordnance disposal (EOD). This will make the robot controller or the operator aware what is in the environment and perform the next tasks. With the recent advancement in deep neural networks in image processing, classifying and detecting the object accurately is now possible. In this paper, Convolutional Neural Networks (CNN) is used to detect objects in the environment. Two state of the art models are compared for object detection, Single Shot Multi-Box Detector (SSD) with MobileNetV1 and a Faster Region-based Convolutional Neural Network (Faster-RCNN) with InceptionV2. Result shows that one model is ideal for real-time application because of speed and the other can be used for more accurate object detection.

Keywords

Computer scienceConvolutional neural networkArtificial intelligenceObject detectionComputer visionObject (grammar)RobotMobile robotDeep learningCognitive neuroscience of visual object recognition

Related papers

Browse all PERCEPTION papers