100 research outputs found

    USNet: underwater image superpixel segmentation via multi-scale water-net

    Get PDF
    Underwater images commonly suffer from a variety of quality degradations, such as color casts, low contrast, blurring details, and limited visibility. Existing superpixel segmentation algorithms face challenges in achieving superior performance when directly applied to underwater images with quality degradation. In this paper, to alleviate the limitations of superpixel segmentation when applied to underwater scenes, we propose the first underwater superpixel segmentation network (USNet), specifically designed according to the intrinsic characteristics of underwater images. Considering the quality degradation, we propose a multi-scale water-net module (MWM) aimed at enhancing the quality of underwater images before superpixel segmentation. The degradation-aware attention (DA) mechanism is then created and incorporated into MWM to solve light scattering and absorption, which can decrease object visibility and cause blurred edges. By effectively directing the network to prioritize locations that exhibit a considerable decrease in quality, this method enhances the visibility of those specific areas. Additionally, we extract the deep spatial features using the coordinate attention method. Finally, these features are fused with the shallow spatial information using the dynamic spatiality embedding module to embed comprehensive spatial features. Training and testing were conducted on the SUIM dataset, the underwater change detection dataset, and UIEB dataset. Experimental results show that our method achieves the best scores in terms of achievable segmentation accuracy, undersegmentation error, and boundary recall evaluation metrics compared to other methods. Both quantitative and qualitative evaluations demonstrate that our method can handle complicated underwater scenes and outperform existing state-of-the-art segmentation methods

    A brief survey of visual saliency detection

    Get PDF

    Semantic Segmentation for Real-World Applications

    Get PDF
    En visión por computador, la comprensión de escenas tiene como objetivo extraer información útil de una escena a partir de datos de sensores. Por ejemplo, puede clasificar toda la imagen en una categoría particular o identificar elementos importantes dentro de ella. En este contexto general, la segmentación semántica proporciona una etiqueta semántica a cada elemento de los datos sin procesar, por ejemplo, a todos los píxeles de la imagen o, a todos los puntos de la nube de puntos. Esta información es esencial para muchas aplicaciones de visión por computador, como conducción, aplicaciones médicas o robóticas. Proporciona a los ordenadores una comprensión sobre el entorno que es necesaria para tomar decisiones autónomas.El estado del arte actual de la segmentación semántica está liderado por métodos de aprendizaje profundo supervisados. Sin embargo, las condiciones del mundo real presentan varias restricciones para la aplicación de estos modelos de segmentación semántica. Esta tesis aborda varios de estos desafíos: 1) la cantidad limitada de datos etiquetados disponibles para entrenar modelos de aprendizaje profundo, 2) las restricciones de tiempo y computación presentes en aplicaciones en tiempo real y/o en sistemas con poder computacional limitado, y 3) la capacidad de realizar una segmentación semántica cuando se trata de sensores distintos de la cámara RGB estándar.Las aportaciones principales en esta tesis son las siguientes:1. Un método nuevo para abordar el problema de los datos anotados limitados para entrenar modelos de segmentación semántica a partir de anotaciones dispersas. Los modelos de aprendizaje profundo totalmente supervisados lideran el estado del arte, pero mostramos cómo entrenarlos usando solo unos pocos píxeles etiquetados. Nuestro enfoque obtiene un rendimiento similar al de los modelos entrenados con imágenescompletamente etiquetadas. Demostramos la relevancia de esta técnica en escenarios de monitorización ambiental y en dominios más generales.2. También tratando con datos de entrenamiento limitados, proponemos un método nuevo para segmentación semántica semi-supervisada, es decir, cuando solo hay una pequeña cantidad de imágenes completamente etiquetadas y un gran conjunto de datos sin etiquetar. La principal novedad de nuestro método se basa en el aprendizaje por contraste. Demostramos cómo el aprendizaje por contraste se puede aplicar a la tarea de segmentación semántica y mostramos sus ventajas, especialmente cuando la disponibilidad de datos etiquetados es limitada logrando un nuevo estado del arte.3. Nuevos modelos de segmentación semántica de imágenes eficientes. Desarrollamos modelos de segmentación semántica que son eficientes tanto en tiempo de ejecución, requisitos de memoria y requisitos de cálculo. Algunos de nuestros modelos pueden ejecutarse en CPU a altas velocidades con alta precisión. Esto es muy importante para configuraciones y aplicaciones reales, ya que las GPU de gama alta nosiempre están disponibles.4. Nuevos métodos de segmentación semántica con sensores no RGB. Proponemos un método para la segmentación de nubes de puntos LiDAR que combina operaciones de aprendizaje eficientes tanto en 2D como en 3D. Logra un rendimiento de segmentación excepcional a velocidades realmente rápidas. También mostramos cómo mejorar la robustez de estos modelos al abordar el problema de sobreajuste y adaptaciónde dominio. Además, mostramos el primer trabajo de segmentación semántica con cámaras de eventos, haciendo frente a la falta de datos etiquetados.Estas contribuciones aportan avances significativos en el campo de la segmentación semántica para aplicaciones del mundo real. Para una mayor contribución a la comunidad cientfíica, hemos liberado la implementación de todas las soluciones propuestas.----------------------------------------In computer vision, scene understanding aims at extracting useful information of a scene from raw sensor data. For instance, it can classify the whole image into a particular category (i.e. kitchen or living room) or identify important elements within it (i.e., bottles, cups on a table or surfaces). In this general context, semantic segmentation provides a semantic label to every single element of the raw data, e.g., to all image pixels or to all point cloud points.This information is essential for many applications relying on computer vision, such as AR, driving, medical or robotic applications. It provides computers with understanding about the environment needed to make autonomous decisions, or detailed information to people interacting with the intelligent systems. The current state of the art for semantic segmentation is led by supervised deep learning methods.However, real-world scenarios and conditions introduce several challenges and restrictions for the application of these semantic segmentation models. This thesis tackles several of these challenges, namely, 1) the limited amount of labeled data available for training deep learning models, 2) the time and computation restrictions present in real time applications and/or in systems with limited computational power, such as a mobile phone or an IoT node, and 3) the ability to perform semantic segmentation when dealing with sensors other than the standard RGB camera.The general contributions presented in this thesis are following:A novel approach to address the problem of limited annotated data to train semantic segmentation models from sparse annotations. Fully supervised deep learning models are leading the state-of-the-art, but we show how to train them by only using a few sparsely labeled pixels in the training images. Our approach obtains similar performance than models trained with fully-labeled images. We demonstrate the relevance of this technique in environmental monitoring scenarios, where it is very common to have sparse image labels provided by human experts, as well as in more general domains. Also dealing with limited training data, we propose a novel method for semi-supervised semantic segmentation, i.e., when there is only a small number of fully labeled images and a large set of unlabeled data. We demonstrate how contrastive learning can be applied to the semantic segmentation task and show its advantages, especially when the availability of labeled data is limited. Our approach improves state-of-the-art results, showing the potential of contrastive learning in this task. Learning from unlabeled data opens great opportunities for real-world scenarios since it is an economical solution. Novel efficient image semantic segmentation models. We develop semantic segmentation models that are efficient both in execution time, memory requirements, and computation requirements. Some of our models able to run in CPU at high speed rates with high accuracy. This is very important for real set-ups and applications since high-end GPUs are not always available. Building models that consume fewer resources, memory and time, would increase the range of applications that can benefit from them. Novel methods for semantic segmentation with non-RGB sensors.We propose a novel method for LiDAR point cloud segmentation that combines efficient learning operations both in 2D and 3D. It surpasses state-of-the-art segmentation performance at really fast rates. We also show how to improve the robustness of these models tackling the overfitting and domain adaptation problem. Besides, we show the first work for semantic segmentation with event-based cameras, coping with the lack of labeled data. To increase the impact of this contributions and ease their application in real-world settings, we have made available an open-source implementation of all proposed solutions to the scientific community.<br /

    Automated interpretation of benthic stereo imagery

    Get PDF
    Autonomous benthic imaging, reduces human risk and increases the amount of collected data. However, manually interpreting these high volumes of data is onerous, time consuming and in many cases, infeasible. The objective of this thesis is to improve the scientific utility of the large image datasets. Fine-scale terrain complexity is typically quantified by rugosity and measured by divers using chains and tape measures. This thesis proposes a new technique for measuring terrain complexity from 3D stereo image reconstructions, which is non-contact and can be calculated at multiple scales over large spatial extents. Using robots, terrain complexity can be measured without endangering humans, beyond scuba depths. Results show that this approach is more robust, flexible and easily repeatable than traditional methods. These proposed terrain complexity features are combined with visual colour and texture descriptors and applied to classifying imagery. New multi-dataset feature selection methods are proposed for performing feature selection across multiple datasets, and are shown to improve the overall classification performance. The results show that the most informative predictors of benthic habitat types are the new terrain complexity measurements. This thesis presents a method that aims to reduce human labelling effort, while maximising classification performance by combining pre-clustering with active learning. The results support that utilising the structure of the unlabelled data in conjunction with uncertainty sampling can significantly reduce the number of labels required for a given level of accuracy. Typically 0.00001–0.00007% of image data is annotated and processed for science purposes (20–50 points in 1–2% of the images). This thesis proposes a framework that uses existing human-annotated point labels to train a superpixel-based automated classification system, which can extrapolate the classified results to every pixel across all the images of an entire survey

    Automated interpretation of benthic stereo imagery

    Get PDF
    Autonomous benthic imaging, reduces human risk and increases the amount of collected data. However, manually interpreting these high volumes of data is onerous, time consuming and in many cases, infeasible. The objective of this thesis is to improve the scientific utility of the large image datasets. Fine-scale terrain complexity is typically quantified by rugosity and measured by divers using chains and tape measures. This thesis proposes a new technique for measuring terrain complexity from 3D stereo image reconstructions, which is non-contact and can be calculated at multiple scales over large spatial extents. Using robots, terrain complexity can be measured without endangering humans, beyond scuba depths. Results show that this approach is more robust, flexible and easily repeatable than traditional methods. These proposed terrain complexity features are combined with visual colour and texture descriptors and applied to classifying imagery. New multi-dataset feature selection methods are proposed for performing feature selection across multiple datasets, and are shown to improve the overall classification performance. The results show that the most informative predictors of benthic habitat types are the new terrain complexity measurements. This thesis presents a method that aims to reduce human labelling effort, while maximising classification performance by combining pre-clustering with active learning. The results support that utilising the structure of the unlabelled data in conjunction with uncertainty sampling can significantly reduce the number of labels required for a given level of accuracy. Typically 0.00001–0.00007% of image data is annotated and processed for science purposes (20–50 points in 1–2% of the images). This thesis proposes a framework that uses existing human-annotated point labels to train a superpixel-based automated classification system, which can extrapolate the classified results to every pixel across all the images of an entire survey
    corecore