Enter AI-based computer vision
AI-based Computer Vision systems have emerged as a game-changer in the detection of cracks in eggs. These systems utilize advanced algorithms and deep learning techniques to analyze high-resolution images of eggs, identifying cracks with remarkable accuracy and efficiency.
How AI-based computer vision works?
The process begins with the acquisition of high-quality and multiple images of individual eggs or groups of eggs using specialized cameras. These images are then fed into a computer vision system equipped with AI algorithms. The AI algorithms analyze the images, extracting relevant features and patterns associated with cracks. The system learns from a vast dataset of annotated images, allowing it to differentiate between normal eggs and those with cracks.
The AI model employs convolutional neural networks (CNNs) to recognize intricate crack patterns, leveraging its ability to detect subtle variations in color, texture, and shape. Through iterative training and validation, the model continuously improves its accuracy and adaptability, becoming highly proficient in distinguishing between different types of cracks, such as hairline cracks or larger fractures.
