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State-of-the-art on research and applications of machine learning in the building life cycle
Fueled by big data, powerful and affordable computing resources, and advanced algorithms, machine learning has been explored and applied to buildings research for the past decades and has demonstrated its potential to enhance building performance. This study systematically surveyed how machine learning has been applied at different stages of building life cycle. By conducting a literature search on the Web of Knowledge platform, we found 9579 papers in this field and selected 153 papers for an in-depth review. The number of published papers is increasing year by year, with a focus on building design, operation, and control. However, no study was found using machine learning in building commissioning. There are successful pilot studies on fault detection and diagnosis of HVAC equipment and systems, load prediction, energy baseline estimate, load shape clustering, occupancy prediction, and learning occupant behaviors and energy use patterns. None of the existing studies were adopted broadly by the building industry, due to common challenges including (1) lack of large scale labeled data to train and validate the model, (2) lack of model transferability, which limits a model trained with one data-rich building to be used in another building with limited data, (3) lack of strong justification of costs and benefits of deploying machine learning, and (4) the performance might not be reliable and robust for the stated goals, as the method might work for some buildings but could not be generalized to others. Findings from the study can inform future machine learning research to improve occupant comfort, energy efficiency, demand flexibility, and resilience of buildings, as well as to inspire young researchers in the field to explore multidisciplinary approaches that integrate building science, computing science, data science, and social science
RGB-D-based Action Recognition Datasets: A Survey
Human action recognition from RGB-D (Red, Green, Blue and Depth) data has
attracted increasing attention since the first work reported in 2010. Over this
period, many benchmark datasets have been created to facilitate the development
and evaluation of new algorithms. This raises the question of which dataset to
select and how to use it in providing a fair and objective comparative
evaluation against state-of-the-art methods. To address this issue, this paper
provides a comprehensive review of the most commonly used action recognition
related RGB-D video datasets, including 27 single-view datasets, 10 multi-view
datasets, and 7 multi-person datasets. The detailed information and analysis of
these datasets is a useful resource in guiding insightful selection of datasets
for future research. In addition, the issues with current algorithm evaluation
vis-\'{a}-vis limitations of the available datasets and evaluation protocols
are also highlighted; resulting in a number of recommendations for collection
of new datasets and use of evaluation protocols
Holistic interpretation of visual data based on topology:semantic segmentation of architectural facades
The work presented in this dissertation is a step towards effectively incorporating contextual knowledge in the task of semantic segmentation. To date, the use of context has been confined to the genre of the scene with a few exceptions in the field. Research has been directed towards enhancing appearance descriptors. While this is unarguably important, recent studies show that computer vision has reached a near-human level of performance in relying on these descriptors when objects have stable distinctive surface properties and in proper imaging conditions. When these conditions are not met, humans exploit their knowledge about the intrinsic geometric layout of the scene to make local decisions. Computer vision lags behind when it comes to this asset. For this reason, we aim to bridge the gap by presenting algorithms for semantic segmentation of building facades making use of scene topological aspects. We provide a classification scheme to carry out segmentation and recognition simultaneously.The algorithm is able to solve a single optimization function and yield a semantic interpretation of facades, relying on the modeling power of probabilistic graphs and efficient discrete combinatorial optimization tools. We tackle the same problem of semantic facade segmentation with the neural network approach.We attain accuracy figures that are on-par with the state-of-the-art in a fully automated pipeline.Starting from pixelwise classifications obtained via Convolutional Neural Networks (CNN). These are then structurally validated through a cascade of Restricted Boltzmann Machines (RBM) and Multi-Layer Perceptron (MLP) that regenerates the most likely layout. In the domain of architectural modeling, there is geometric multi-model fitting. We introduce a novel guided sampling algorithm based on Minimum Spanning Trees (MST), which surpasses other propagation techniques in terms of robustness to noise. We make a number of additional contributions such as measure of model deviation which captures variations among fitted models
Learning Object Recognition and Object Class Segmentation with Deep Neural Networks on GPU
As cameras are becoming ubiquitous and internet storage abundant, the need for computers to understand images is growing rapidly. This thesis is concerned with two computer vision tasks, recognizing objects and their location, and segmenting images according to object classes. We focus on deep learning approaches, which in recent years had a tremendous influence on machine learning in general and computer vision in particular. The thesis presents our research into deep learning models and algorithms. It is divided into three parts. The first part describes our GPU deep learning framework. Its hierarchical structure allows transparent use of GPU, facilitates specification of complex models, model inspection, and constitutes the implementation basis of the later chapters. Components of this framework were used in a real-time GPU library for random forests, which we present and evaluate. In the second part, we investigate greedy learning techniques for semi-supervised object recognition. We improve the feature learning capabilities of restricted Boltzmann machines (RBM) with lateral interactions and auto-encoders with additional hidden layers, and offer empirical insight into the evaluation of RBM learning algorithms. The third part of this thesis focuses on object class segmentation. Here, we incrementally introduce novel neural network models and training algorithms, successively improving the state of the art on multiple datasets. Our novel methods include supervised pre-training, histogram of oriented gradient DNN inputs, depth normalization and recurrence. All contribute towards improving segmentation performance beyond what is possible with competitive baseline methods. We further demonstrate that pixelwise labeling combined with a structured loss function can be utilized to localize objects. Finally, we show how transfer learning in combination with object-centered depth colorization can be used to identify objects. We evaluate our proposed methods on the publicly available MNIST, MSRC, INRIA Graz-02, NYU-Depth, Pascal VOC, and Washington RGB-D Objects datasets.Allgegenwärtige Kameras und preiswerter Internetspeicher erzeugen einen großen Bedarf an Algorithmen für maschinelles Sehen. Die vorliegende Dissertation adressiert zwei Teilbereiche dieses Forschungsfeldes: Erkennung von Objekten und Objektklassensegmentierung. Der methodische Schwerpunkt liegt auf dem Lernen von tiefen Modellen (”Deep Learning“). Diese haben in den vergangenen Jahren einen enormen Einfluss auf maschinelles Lernen allgemein und speziell maschinelles Sehen gewonnen. Dabei behandeln wir behandeln wir drei Themenfelder. Der erste Teil der Arbeit beschreibt ein GPU-basiertes Softwaresystem für Deep Learning. Dessen hierarchische Struktur erlaubt schnelle GPU-Berechnungen, einfache Spezifikation komplexer Modelle und interaktive Modellanalyse. Damit liefert es das Fundament für die folgenden Kapitel. Teile des Systems finden Verwendung in einer Echtzeit-GPU-Bibliothek für Random Forests, die wir ebenfalls vorstellen und evaluieren. Der zweite Teil der Arbeit beleuchtet Greedy-Lernalgorithmen für halb überwachtes Lernen. Hier werden hierarchische Modelle schrittweise aus Modulen wie Autokodierern oder restricted Boltzmann Machines (RBM ) aufgebaut. Wir verbessern die Repräsentationsfähigkeiten von RBM auf Bildern durch Einführung lokaler und lateraler Verknüpfungen und liefern empirische Erkenntnisse zur Bewertung von RBM-Lernalgorithmen. Wir zeigen zudem, dass die in Autokodierern verwendeten einschichtigen Kodierer komplexe Zusammenhänge ihrer Eingaben nicht erkennen können und schlagen stattdessen einen hybriden Kodierer vor, der sowohl komplexe Zusammenhänge erkennen, als auch weiterhin einfache Zusammenhänge einfach repräsentieren kann. Im dritten Teil der Arbeit stellen wir neue neuronale Netzarchitekturen und Trainingsmethoden für die Objektklassensegmentierung vor. Wir zeigen, dass neuronale Netze mit überwachtem Vortrainieren, wiederverwendeten Ausgaben und Histogrammen Orientierter Gradienten (HOG) als Eingabe den aktuellen Stand der Technik auf mehreren RGB-Datenmengen erreichen können. Anschließend erweitern wir unsere Methoden in zwei Dimensionen, sodass sie mit Tiefendaten (RGB-D) und Videos verarbeiten können. Dazu führen wir zunächst Tiefennormalisierung für Objektklassensegmentierung ein um die Skala zu fixieren, und erlauben expliziten Zugriff auf die Höhe in einem Bildausschnitt. Schließlich stellen wir ein rekurrentes konvolutionales neuronales Netz vor, das einen großen räumlichen Kontext einbezieht, hochaufgelöste Ausgaben produziert und Videosequenzen verarbeiten kann. Dadurch verbessert sich die Bildsegmentierung relativ zu vergleichbaren Methoden, etwa auf der Basis von Random Forests oder CRF . Wir zeigen dann, dass pixelbasierte Ausgaben in neuronalen Netzen auch benutzt werden können um die Position von Objekten zu detektieren. Dazu kombinieren wir Techniken des strukturierten Lernens mit Konvolutionsnetzen. Schließlich schlagen wir eine objektzentrierte Einfärbungsmethode vor, die es ermöglicht auf RGB-Bildern trainierte neuronale Netze auf RGB-D-Bildern einzusetzen. Dieser Transferlernansatz erlaubt es uns auch mit stark reduzierten Trainingsmengen noch bessere Ergebnisse beim Schätzen von Objektklassen, -instanzen und -orientierungen zu erzielen. Wir werten die von uns vorgeschlagenen Methoden auf den öffentlich zugänglichen MNIST, MSRC, INRIA Graz-02, NYU-Depth, Pascal VOC, und Washington RGB-D Objects Datenmengen aus
Deep Recurrent Learning for Efficient Image Recognition Using Small Data
Recognition is fundamental yet open and challenging problem in computer vision. Recognition involves the detection and interpretation of complex shapes of objects or persons from previous encounters or knowledge. Biological systems are considered as the most powerful, robust and generalized recognition models. The recent success of learning based mathematical models known as artificial neural networks, especially deep neural networks, have propelled researchers to utilize such architectures for developing bio-inspired computational recognition models. However, the computational complexity of these models increases proportionally to the challenges posed by the recognition problem, and more importantly, these models require a large amount of data for successful learning. Additionally, the feedforward-based hierarchical models do not exploit another important biological learning paradigm, known as recurrency, which ubiquitously exists in the biological visual system and has been shown to be quite crucial for recognition.
Consequently, this work aims to develop novel biologically relevant deep recurrent learning models for robust recognition using limited training data. First, we design an efficient deep simultaneous recurrent network (DSRN) architecture for solving several challenging image recognition tasks. The use of simultaneous recurrency in the proposed model improves the recognition performance and offers reduced computational complexity compared to the existing hierarchical deep learning models. Moreover, the DSRN architecture inherently learns meaningful representations of data during the training process which is essential to achieve superior recognition performance. However, probabilistic models such as deep generative models are particularly adept at learning representations directly from unlabeled input data. Accordingly, we show the generalization of the proposed deep simultaneous recurrency concept by developing a probabilistic deep simultaneous recurrent belief network (DSRBN) architecture which is more efficient in learning the underlying representation of the data compared to the state-of-the-art generative models. Finally, we propose a deep recurrent learning framework for solving the image recognition task using small data. We incorporate Bayesian statistics to the DSRBN generative model to propose a deep recurrent generative Bayesian model that addresses the challenge of learning from a small amount of data. Our findings suggest that the proposed deep recurrent Bayesian framework demonstrates better image recognition performance compared to the state-of-the-art models in a small data learning scenario. In conclusion, this dissertation proposes novel deep recurrent learning pipelines, which utilize not only limited training data to achieve improved image recognition performance but also require significantly reduced training parameters
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