<?xml version="1.0" encoding="UTF-8"?>
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  <title>DSpace Collection:</title>
  <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/3420" />
  <subtitle />
  <id>http://localhost:8080/xmlui/handle/123456789/3420</id>
  <updated>2026-06-23T06:33:36Z</updated>
  <dc:date>2026-06-23T06:33:36Z</dc:date>
  <entry>
    <title>Detection of Anomalies using Local Outlier  Factor and Isolation Forest algorithm</title>
    <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/3425" />
    <author>
      <name>Nimani, Sunny</name>
    </author>
    <author>
      <name>Khairnar, Mahesh</name>
    </author>
    <author>
      <name>Khele, Prathamesh</name>
    </author>
    <author>
      <name>Patil, Vishal</name>
    </author>
    <author>
      <name>Banait, S.S.</name>
    </author>
    <id>http://localhost:8080/xmlui/handle/123456789/3425</id>
    <updated>2022-08-20T10:55:31Z</updated>
    <published>2022-06-05T00:00:00Z</published>
    <summary type="text">Title: Detection of Anomalies using Local Outlier  Factor and Isolation Forest algorithm
Authors: Nimani, Sunny; Khairnar, Mahesh; Khele, Prathamesh; Patil, Vishal; Banait, S.S.
Abstract: : Data generated from smart devices or applications are in time-series format, in which information is &#xD;
recorded for each specific time. Anomalies in log data refer to certain patterns or points in data that deviate from &#xD;
average data. Anomaly detection is concerned with identifying data patterns that deviate remarkably from the &#xD;
expected behavior. This is an important research problem, due to its broad set of application domains, from data &#xD;
analysis to e-health, cybersecurity, predictive maintenance, financial fault prevention, and industrial automation. &#xD;
Efficiency of Local Outlier Factor Algorithm, Isolation Forest Algorithm is compared. Testing dataset is obtained &#xD;
from Indian Council of Medical Research (ICMR) and credit card company transactional data.</summary>
    <dc:date>2022-06-05T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>Underwater Marine Life Detection Using Image Processing</title>
    <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/3424" />
    <author>
      <name>Joshi, Yash</name>
    </author>
    <author>
      <name>Desale, Rutik</name>
    </author>
    <author>
      <name>Dixit, Sairaj</name>
    </author>
    <author>
      <name>Jadhav, Malhar</name>
    </author>
    <author>
      <name>Mahajan, Monali</name>
    </author>
    <id>http://localhost:8080/xmlui/handle/123456789/3424</id>
    <updated>2022-08-20T10:52:20Z</updated>
    <published>2022-06-20T00:00:00Z</published>
    <summary type="text">Title: Underwater Marine Life Detection Using Image Processing
Authors: Joshi, Yash; Desale, Rutik; Dixit, Sairaj; Jadhav, Malhar; Mahajan, Monali
Abstract: Marine life research and computer technology have been utilized in tandem for the study of aquatic ecosystems &#xD;
and the analysis of ocean floors throughout the last few decades. Few modern solutions have been offered in &#xD;
this field in recent years. The work in object detection and recognition based on machine learning models have &#xD;
given good information about the surroundings and behavior of marine ecosystems. These models are complex &#xD;
in usage, they often rely on the information source from multiple data forms. The major task is to remove the &#xD;
high impurities in underwater images as the noise removal process is difficult. The image extraction is carried &#xD;
out using darknet which helps in proper object detection. Due to this, the actual applications and study of &#xD;
marine life is realized easily. A suitable environment will be created so that machine learning algorithms such &#xD;
as YOLO will be used to detect and recognize the animals under the ocean with the help of image processing</summary>
    <dc:date>2022-06-20T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>Speech Emotion Recognition using MLP Classifier</title>
    <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/3423" />
    <author>
      <name>Wagh, Roshan</name>
    </author>
    <author>
      <name>Gade, Yash</name>
    </author>
    <author>
      <name>Wagh, Abhishek</name>
    </author>
    <author>
      <name>Bansod, Amon</name>
    </author>
    <id>http://localhost:8080/xmlui/handle/123456789/3423</id>
    <updated>2022-08-20T10:46:03Z</updated>
    <published>2022-06-15T00:00:00Z</published>
    <summary type="text">Title: Speech Emotion Recognition using MLP Classifier
Authors: Wagh, Roshan; Gade, Yash; Wagh, Abhishek; Bansod, Amon
Abstract: As human beings speech is natural way to express ourselves. Humans depend so much on it. Emotions play a important role in &#xD;
communication . Detection and analysis of emotion is very important in today’s digital world.Emotion detection is a challenging &#xD;
task. There is not a general agreement on how to measure or categorize them. Speech Emotion Recognition process and classify &#xD;
speech signals to detect emotions embedded in them. Speech Emotion Recognition system can be used in various areas.The &#xD;
application area are like interactive voice based-assistant , caller agent conversation analysis,security and other fields. This System &#xD;
attempts to detect emotions in audio file passed by analysing the acoustic features. System uses MLP Classifier to classify the &#xD;
emotions from the given wave signal. RAVDESS dataset will be used .The features to be extracted from the audio input provided &#xD;
will be attracted by these five parameters which are as follows, MFCC, Contrast, Mel Spectrograph&#xD;
Frequency, Chroma and Tonnetz.</summary>
    <dc:date>2022-06-15T00:00:00Z</dc:date>
  </entry>
  <entry>
    <title>Waste Classification</title>
    <link rel="alternate" href="http://localhost:8080/xmlui/handle/123456789/3422" />
    <author>
      <name>Patil, Digambar</name>
    </author>
    <author>
      <name>Rathi, Ashutosh</name>
    </author>
    <author>
      <name>Banait, S.S.</name>
    </author>
    <author>
      <name>Ugale, Rutuja</name>
    </author>
    <author>
      <name>Bhutkar, Sakshi</name>
    </author>
    <id>http://localhost:8080/xmlui/handle/123456789/3422</id>
    <updated>2022-08-20T10:23:56Z</updated>
    <published>2022-06-20T00:00:00Z</published>
    <summary type="text">Title: Waste Classification
Authors: Patil, Digambar; Rathi, Ashutosh; Banait, S.S.; Ugale, Rutuja; Bhutkar, Sakshi
Abstract: A large amount of solid waste is generated in &#xD;
urban areas with a variety of types like plastic, garden &#xD;
waste, paper, glass, etc. For efficient waste management &#xD;
it is necessary to treat different types of waste in a &#xD;
different manner. In order to achieve this, waste must &#xD;
be separated into various categories. Thus, the concept &#xD;
of segregating wet and dry waste has been introduced &#xD;
by the government. By following the guidelines given by &#xD;
the government, a huge amount of budget for waste &#xD;
segregation is saved and can be used for further waste &#xD;
management. Keeping all of this in mind, the proposed &#xD;
system aims to classify wet and dry waste based on the &#xD;
captured image of the waste. The captured image of &#xD;
waste is passed through the system to classify the type of &#xD;
waste. This can help us get data relating to a variety of &#xD;
waste types. Furthermore, it can help analyze the waste &#xD;
disposal habits of people at different locations, which &#xD;
can help create awareness in places where improvement &#xD;
is required</summary>
    <dc:date>2022-06-20T00:00:00Z</dc:date>
  </entry>
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