Domain Image Retrieval Using Machine Learning - 5 Angebote vergleichen
Bester Preis: € 22,79 (vom 01.09.2023)1
Domain Image Retrieval Using Machine Learning (2023)
~EN PB NW RP
ISBN: 9782195582318 bzw. 2195582316, vermutlich in Englisch, SHINE PUBLISHER Jul 2023, Taschenbuch, neu, Nachdruck.
Von Händler/Antiquariat, BuchWeltWeit Inh. Ludwig Meier e.K. [57449362], Bergisch Gladbach, Germany.
This item is printed on demand - it takes 3-4 days longer - Neuware -Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets.The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities.One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content.Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities.In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. 120 pp. Englisch, Books.
This item is printed on demand - it takes 3-4 days longer - Neuware -Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets.The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities.One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content.Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities.In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. 120 pp. Englisch, Books.
2
Domain Image Retrieval Using Machine Learning (2023)
~EN PB NW
ISBN: 9782195582318 bzw. 2195582316, vermutlich in Englisch, SHINE PUBLISHER, Taschenbuch, neu.
Von Händler/Antiquariat, AHA-BUCH GmbH [51283250], Einbeck, Germany.
nach der Bestellung gedruckt Neuware - Printed after ordering - Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets.The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities.One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content.Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities.In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. 120 pp. Englisch, Books.
nach der Bestellung gedruckt Neuware - Printed after ordering - Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets.The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities.One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content.Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities.In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. 120 pp. Englisch, Books.
3
Domain Image Retrieval Using Machine Learning (2023)
EN PB NW
ISBN: 9782195582318 bzw. 2195582316, in Englisch, Taschenbuch, neu.
Lieferung aus: Niederlande, zzgl. Versandkosten.
Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets. The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities. One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content. Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities. In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. Computerboeken, Alle computerboeken, Engelse Boeken > Computerboeken > Alle computerboeken.
Domain image retrieval is an emerging field that leverages machine learning techniques to facilitate efficient and accurate image search and retrieval within specific domains or industries. This research focuses on exploring the applications of machine learning algorithms in the context of image retrieval, where the goal is to develop intelligent systems capable of understanding visual content and retrieving relevant images from large datasets. The investigates various machine learning approaches used in domain image retrieval, with a particular emphasis on deep learning methodologies. Convolutional Neural Networks (CNNs) and other advanced neural network architectures have demonstrated remarkable success in extracting meaningful features from images, enabling the creation of powerful image representations. These learned representations form the foundation of image retrieval systems, allowing for effective matching and retrieval of images based on their content similarities. One crucial aspect addressed in this research is the selection of appropriate training datasets to ensure the models are fine-tuned to the specific domain of interest. Training on domain-specific data helps improve the retrieval accuracy and ensures that the system can understand the nuances and context of the target domain's visual content. Explores different techniques to improve the efficiency and scalability of domain image retrieval systems. Indexing and hashing methods are examined to speed up the search process and reduce computational complexity, enabling real-time or near-real-time image retrieval capabilities. In addition to discussing the technical aspects of domain image retrieval, this research delves into potential applications in various industries. For instance, in e-commerce, domain image retrieval systems can enhance the user experience by allowing customers to find visually similar products or discover related items based on their preferences. In fields like medicine and healthcare, the ability to retrieve relevant medical images quickly can aid in diagnosis and treatment planning. Computerboeken, Alle computerboeken, Engelse Boeken > Computerboeken > Alle computerboeken.
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Domain Image Retrieval Using Machine Learning (Paperback or Softback) (2023)
~EN PB NW
ISBN: 9782195582318 bzw. 2195582316, vermutlich in Englisch, Shine Publisher 7/29/2023, Taschenbuch, neu.
Von Händler/Antiquariat, BargainBookStores [1033621], Grand Rapids, MI, U.S.A.
Domain Image Retrieval Using Machine Learning, Books.
Domain Image Retrieval Using Machine Learning, Books.
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Domain Image Retrieval Using Machine Learning
~EN PB NW
ISBN: 9782195582318 bzw. 2195582316, vermutlich in Englisch, SHINE PUBLISHER, Taschenbuch, neu.
Lieferung aus: Niederlande, 2 - 3 weken.
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