4 research outputs found

    An Anti-Cheating System for Online Interviews and Exams

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    Remote examination and job interviews have gained popularity and become indispensable because of both pandemics and the advantage of remote working circumstances. Most businesses and educational organizations use these platforms for recruitment as well as online exams. However, one of the critical problems of the remote examination systems is conducting the exams in a reliable environment. In this work, we present a cheating analysis pipeline for online interviews and exams. The system only requires a video of the candidate, which is recorded during the exam by using a webcam without a need for any extra tool. Then cheating detection pipeline is employed to detect the presence of another person, electronic device usage, and candidate absence status. The pipeline consists of face detection, face recognition, object detection, and face tracking algorithms. To evaluate the performance of the pipeline we collected a private video dataset. The video dataset includes both cheating activities and clean videos. Ultimately, our pipeline presents an efficient and fast guideline for detecting and analyzing cheating actions in an online interview and exam video

    Automatic Segmentation of Land Cover in Satellite Images

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    Semantic segmentation problems such as landcover segmentation rely on large amounts of annotated images to excel. Without such data for target regions, transfer learning methods are widely used to incorporate knowledge from other areas and domains to improve performance. In this study, we analyze the performance of landcover segmentation models trained on low-resolution images with insufficient data for the targeted region or zoom level. In order to boost performance on target data, we experiment with models trained with unsupervised, semi-supervised, and supervised transfer learning approaches, including satellite images from public datasets and other unlabeled sources.According to experimental results, transfer learning improves segmentation performance by 3.4% MIoU (mean intersection over union) in rural regions and 12.9% MIoU in urban regions. We observed that transfer learning is more effective when two datasets share a comparable zoom level and are labeled with identical rules; otherwise, semi-supervised learning is more effective using unlabeled data. Pseudo labeling based unsupervised domain adaptation method improved building detection performance in urban cities. In addition, experiments showed that HRNet outperformed building segmentation approaches in multi-class segmentation

    Semi-Supervised Domain Adaptation for Semantic Segmentation of Roads from Satellite Images

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    This paper presents the preliminary findings of a semi-supervised segmentation method for extracting roads from sattelite images. Artificial Neural Networks and image segmentation methods are among the most successful methods for extracting road data from satellite images. However, these models require large amounts of training data from different regions to achieve high accuracy rates. In cases where this data needs to be of more quantity or quality, it is a standard method to train deep neural networks by transferring knowledge from annotated data obtained from different sources. This study proposes a method that performs path segmentation with semi-supervised learning methods. A semi-supervised field adaptation method based on pseudo-labeling and Minimum Class Confusion method has been proposed, and it has been observed to increase performance in targeted datasets.Comment: in Turkish languag
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