[Oral Presentation]Evaluating Convolutional Neural Network Models: Performance Perspective in Video Summarization

Evaluating Convolutional Neural Network Models: Performance Perspective in Video Summarization
ID:75 Submission ID:163 View Protection:ATTENDEE Updated Time:2024-08-17 16:13:55 Hits:87 Oral Presentation

Start Time:Pending (Asia/Bangkok)

Duration:Pending

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Abstract
The nature of data is evolving with technological progress. Initially dominated by text datasets, the focus has now shifted to images and, more recently, to extensive video datasets. This evolution necessitates advanced technologies capable of processing images and developing intelligent systems to accurately extract information from them. Pre-trained convolutional neural network (CNN) models are essential tools for this task. In this paper, we present a comparative analysis of the performance of various CNN models, including AlexNet, GoogleNet, and SqueezeNet, specifically for image classification. We evaluate and compare the accuracy of these models in object detection across three different datasets—animals, birds, and flowers—sourced from Kaggle's online repository.
Keywords
Alexnet, Artificial Intelligence, Convolutional Neural Network (Cnn), Deep Learning, Googlenet, Squeezenet
Speaker
Dr. Rachit Adhvaryu
Assistant Professor Parul University

Submission Author
Dr. Rachit Adhvaryu Parul University
Dr. Kamal Sutaria Parul University
Dr. Dipesh Kamdar Parul University
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