Convolutional Neural Network-based Object Detection

Abstract

In the midst of the efforts in an item identification, region CNNs (rCNN) stands out as the most impressive, combining discriminatory exploration, CNNs, sustenance vector machines (SVM), and bounding box regression to achieve excellent object detection performance. We propose a new method for identifying numerous items from pictures using convolution neural nets (CNNs) in this presented study. The authors of the presented study use the edge box technique to create region suggestions from edge maps for each picture in our model, and then forward pass all of the proposals through a well-accepted CaffeNet prototype. Then we extract the yield of softmax that generally is most recent layer of CNN, to determine CNNs score for every proposal. One of the greedy suppression methodology referred to as non-maximum suppression (NMS) method is then used to combine the suggestions for each class separately. Finally, we assess each class's mean average precision (mAP). On the PASCAL 2007 test dataset, our model has a mAP of 37.38 percent. In this work, we also explore ways to enhance performance based on our model.

Authors and Affiliations

Dr. Ashish Oberoi

Keywords

Related Articles

CNC Machine Technologies: A Review

Portable, interoperable, and flexible are the objectives of following generations of computer-controlled technologies G-codes have long been used by CNC production instruments for component programmers and are now seen a...

Study of the Solar Collectors with Evacuated Tubes

Solar thermal collector systems allow solar energy to be used for cooling and heating. A heat transfer fluid is utilized in these collectors to transmit collected solar energy to applications that need it. Scientists hav...

The Security of the Transferred Information for Critical Applications in Wireless Communication

The development of wireless communication has changed the way of live. : Cellular Telephone Systems, Cordless Phones and Satellite Networks are common place, and many users carry devices that can double as wireless compu...

A Framework for Modeling Non-Functional Requirements for Business-Critical Systems

Proper definition and implementation of NFRs is critical. In case they are Over-specify, then the solution may be too costly to be viable; in case they are underspecified or underachieve them, the system will be inadequa...

Vocal Visage: Crafting Lifelike 3D Talking Faces from Static Images and Sound

In the field of computer graphics and animation, the challenge of generating lifelike and expressive talking face animations has historically necessitated extensive 3D data and complex facial motion capture systems. Howe...

Download PDF file
  • EP ID EP746626
  • DOI 10.55524/ijircst.2022.10.3.55
  • Views 29
  • Downloads 0

How To Cite

Dr. Ashish Oberoi (2022). Convolutional Neural Network-based Object Detection. International Journal of Innovative Research in Computer Science and Technology, 10(2), -. https://europub.co.uk/articles/-A-746626