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Birding with AI (Concepts and Projects for Ornithology)
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Product Details
Author:
Ronald T. Kneusel
Format:
Hardcover
Pages:
212
Publisher:
Pelagic (November 25, 2025)
Imprint:
Pelagic
Language:
English
ISBN-13:
9781784276027
ISBN-10:
1784276022
Weight:
17.6oz
Dimensions:
6.69" x 9.61" x 0.8"
File:
Eloquence-SimonSchuster_04022026_P9912986_onix30_Complete-20260402.xml
Folder:
Eloquence
List Price:
$84.00
Pub Discount:
32
As low as:
$79.80
Publisher Identifier:
P-SS
Discount Code:
H
Case Pack:
22
Overview
Birding with AI introduces readers to the increasingly ubiquitous realm of artificial intelligence and its applications in ornithology and wildlife biology. As well as showcasing the potential utility of deep learning in ornithology, the book demonstrates how to understand, design, implement and evaluate AI models for ornithology and related fields.
Readers will learn:
- The background of AI, specifically deep learning, and how it applies to image interpretation.
- How to build deep-learning models for computer vision and how to compile bird image
- About the use of pretrained models, especially CLIP, which alone is capable of out-of-the-box bird detection with high accuracy.
- Tailoring CLIP-embedding models with small datasets for specific classification tasks.
- How to create models that go beyond classification to localization.
- How to classify bird audio recordings.
- How to use open source tools like Merlin and BirdNet to augment research-question specific models.
This ground-breaking volume adopts an approach based on exploring existing birding tools using AI, leading to an overview of artificial intelligence that will help build intuition about how it works. This provides a foundation for the example projects that follow, enhancing the reader’s confidence in their ability to engage and participate in research involving AI. The projects are designed to guide the reader through the model-building process from dataset creation to training, testing and deployment – whether this be for image recognition, classification of calls or other new frontiers birding.
Readers will learn:
- The background of AI, specifically deep learning, and how it applies to image interpretation.
- How to build deep-learning models for computer vision and how to compile bird image
- About the use of pretrained models, especially CLIP, which alone is capable of out-of-the-box bird detection with high accuracy.
- Tailoring CLIP-embedding models with small datasets for specific classification tasks.
- How to create models that go beyond classification to localization.
- How to classify bird audio recordings.
- How to use open source tools like Merlin and BirdNet to augment research-question specific models.
This ground-breaking volume adopts an approach based on exploring existing birding tools using AI, leading to an overview of artificial intelligence that will help build intuition about how it works. This provides a foundation for the example projects that follow, enhancing the reader’s confidence in their ability to engage and participate in research involving AI. The projects are designed to guide the reader through the model-building process from dataset creation to training, testing and deployment – whether this be for image recognition, classification of calls or other new frontiers birding.








