Image Retrieval Performance Tuning Using Optimization Algorithms

Journal Title: International Journal of Experimental Research and Review - Year 2023, Vol 33, Issue 4

Abstract

The relentlessness of modern life's pace has pushed many people to look for ways to save time so they may continue living the way they choose. The management of traffic presents a considerable obstacle due to the fact that a large proportion of persons have difficulties associated with transportation. As a result, fixing traffic problems becomes an absolute need. Machine learning stands out as a useful resource in this setting, providing deeper understanding and better analytical tools for sifting through complicated statistical data. The feasibility of travel for both large and light vehicles may be quickly assessed by experts, allowing for more timely and well-informed decisions. These evaluations serve as the basis for developing separate roadways, laws and sets of rules for various classes of vehicles. This study examines six characteristics of vehicular traffic and travel situations over 38,114 occurrences. Our goal is to improve traffic management through prediction and optimization using six different optimizers from the deep learning area. Based on observed patterns of truck traffic over a certain time period, these methods help determine optimal distribution paths for sent commodities. Six different deep learning optimizer models are compared and contrasted in this study. The objective is to use these examples to determine which optimizer is best. It's not easy to pick the best optimizer for use in deep learning. To this goal, we conducted an in-depth analysis of six industry-leading optimizers to identify the best tool for predicting traffic accidents. We ran extensive tests using a dataset that had 30,492 training examples (80%) and 7,622 testing instances (20%). Different seed values, ranging from 20 to 100, were used in each iteration of the experiment. We tested and compared the following optimizers: the Adaptive Gradient (AG) Algorithm, the Adaptive Learning Rate (ALR) Method, the Root Mean Squared (RMS) Propagation, the Adaptive Moment (AM) Estimation, the Nesterov-accelerated Adaptive Moment (NAM) Estimation, and the Stochastic Gradient (SG) Descent, taking into account processing times, prediction accuracy, and error analysis. The results of the experiment showed that the NAM Estimation Optimizer was much superior. Time spent processing data was cut down, and errors were kept to a minimum (0.03%). Prediction accuracy was also exceptionally high at 99.85%. This result reaffirms NAM Estimation's promise as a leading method for improving traffic management and making accurate trip predictions.

Authors and Affiliations

Syed Qamrul Kazmi, Munindra Kumar Singh, Saurabh Pal

Keywords

Related Articles

Statistical feature-based EEG signals classification using ANN and SVM classifiers for Parkinson’s disease detection

Parkinson's disease (PD) is a neurological disorder which is progressive in nature. Although there is no cure to this disease, symptomatic treatments are available. These treatments can slow the progressive development o...

The practical and potential importance of herbs such as ginger in Chemical Environmental Science

This article examines the medicinal and dietary supplement on the biological activities of identified chemicals from Ginger (Zingiber officinale) of Zingibracea family. Ginger have long been used in traditional medicine....

An Approach for Efficient and Accurate Phishing Website Prediction Using Improved ML Classifier Performance for Feature Selection

The article discusses the use of machine learning (ML) to combat phishing websites, which are deceptive sites that mimic trusted entities to steal sensitive information. This is why the continued invention of methods of...

Deep CNN-based Classification of Brain MRI Images for Alzheimer’s Disease Diagnosis

As the leading cause of dementia worldwide, Alzheimer's disease afflicts millions, with progressively impaired abilities to carry out daily activities or communicate and even recognize faces. Although the cause behind lu...

Predictive risk assessment of a common food additive monosodium glutamate : An in vivo biochemical, patho-physiological and molecular study

Monosodium glutamate (MSG) is a popular food additive commonly known as Ajinomoto, which has a flavour enhancing effect on food. We investigated if the MSG has any potential to alter kidney and liver function and biochem...

Download PDF file
  • EP ID EP721333
  • DOI 10.52756/ijerr.2023.v33spl.002
  • Views 54
  • Downloads 0

How To Cite

Syed Qamrul Kazmi, Munindra Kumar Singh, Saurabh Pal (2023). Image Retrieval Performance Tuning Using Optimization Algorithms. International Journal of Experimental Research and Review, 33(4), -. https://europub.co.uk/articles/-A-721333