Patrón Binario Local (LBP)
El Patrón Binario Local (LBP) es un método potente, simple y eficiente para la textura classification in procesamiento de imágenes. Developed in 1994 by Ojala et al., LBP is particularly effective for capturing local spatial patterns and texture information within images.
At its core, LBP operates by examining a pixel’s neighborhood in a imagen en escala de grises. For each pixel, the algorithm compares it with its surrounding pixels, typically in a 3×3 grid. Each neighboring pixel is assigned a binary value: 1 if its value is greater than or equal to the center pixel’s value and 0 otherwise. This results in an 8-bit binary number, which can be converted into a decimal value. The process is repeated for each pixel in the image, generating a new image where each pixel’s value corresponds to its local binary pattern.
LBP has several advantages, including its invariance to monotonic changes in illumination and its ability to capture local texture information effectively. It is widely used in various applications, such as reconocimiento facial, image retrieval, and medical imaging. Furthermore, LBP can be extended to different configurations, such as using larger neighborhoods or varying the number of bits, allowing for greater flexibility in texture analysis.
En resumen, el Patrón Binario Local es una herramienta fundamental en visión por computadora and image analysis, providing a simple yet robust method for texture representation and recognition.