39 research outputs found

    Semantic Instance Annotation of Street Scenes by 3D to 2D Label Transfer

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    Semantic annotations are vital for training models for object recognition, semantic segmentation or scene understanding. Unfortunately, pixelwise annotation of images at very large scale is labor-intensive and only little labeled data is available, particularly at instance level and for street scenes. In this paper, we propose to tackle this problem by lifting the semantic instance labeling task from 2D into 3D. Given reconstructions from stereo or laser data, we annotate static 3D scene elements with rough bounding primitives and develop a model which transfers this information into the image domain. We leverage our method to obtain 2D labels for a novel suburban video dataset which we have collected, resulting in 400k semantic and instance image annotations. A comparison of our method to state-of-the-art label transfer baselines reveals that 3D information enables more efficient annotation while at the same time resulting in improved accuracy and time-coherent labels.Comment: 10 pages in Conference on Computer Vision and Pattern Recognition (CVPR), 201

    The Cityscapes Dataset for Semantic Urban Scene Understanding

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    Visual understanding of complex urban street scenes is an enabling factor for a wide range of applications. Object detection has benefited enormously from large-scale datasets, especially in the context of deep learning. For semantic urban scene understanding, however, no current dataset adequately captures the complexity of real-world urban scenes. To address this, we introduce Cityscapes, a benchmark suite and large-scale dataset to train and test approaches for pixel-level and instance-level semantic labeling. Cityscapes is comprised of a large, diverse set of stereo video sequences recorded in streets from 50 different cities. 5000 of these images have high quality pixel-level annotations; 20000 additional images have coarse annotations to enable methods that leverage large volumes of weakly-labeled data. Crucially, our effort exceeds previous attempts in terms of dataset size, annotation richness, scene variability, and complexity. Our accompanying empirical study provides an in-depth analysis of the dataset characteristics, as well as a performance evaluation of several state-of-the-art approaches based on our benchmark.Comment: Includes supplemental materia

    A brief survey of visual saliency detection

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    Multi-task near-field perception for autonomous driving using surround-view fisheye cameras

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    Die Bildung der Augen führte zum Urknall der Evolution. Die Dynamik änderte sich von einem primitiven Organismus, der auf den Kontakt mit der Nahrung wartete, zu einem Organismus, der durch visuelle Sensoren gesucht wurde. Das menschliche Auge ist eine der raffiniertesten Entwicklungen der Evolution, aber es hat immer noch Mängel. Der Mensch hat über Millionen von Jahren einen biologischen Wahrnehmungsalgorithmus entwickelt, der in der Lage ist, Autos zu fahren, Maschinen zu bedienen, Flugzeuge zu steuern und Schiffe zu navigieren. Die Automatisierung dieser Fähigkeiten für Computer ist entscheidend für verschiedene Anwendungen, darunter selbstfahrende Autos, Augmented Realität und architektonische Vermessung. Die visuelle Nahfeldwahrnehmung im Kontext von selbstfahrenden Autos kann die Umgebung in einem Bereich von 0 - 10 Metern und 360° Abdeckung um das Fahrzeug herum wahrnehmen. Sie ist eine entscheidende Entscheidungskomponente bei der Entwicklung eines sichereren automatisierten Fahrens. Jüngste Fortschritte im Bereich Computer Vision und Deep Learning in Verbindung mit hochwertigen Sensoren wie Kameras und LiDARs haben ausgereifte Lösungen für die visuelle Wahrnehmung hervorgebracht. Bisher stand die Fernfeldwahrnehmung im Vordergrund. Ein weiteres wichtiges Problem ist die begrenzte Rechenleistung, die für die Entwicklung von Echtzeit-Anwendungen zur Verfügung steht. Aufgrund dieses Engpasses kommt es häufig zu einem Kompromiss zwischen Leistung und Laufzeiteffizienz. Wir konzentrieren uns auf die folgenden Themen, um diese anzugehen: 1) Entwicklung von Nahfeld-Wahrnehmungsalgorithmen mit hoher Leistung und geringer Rechenkomplexität für verschiedene visuelle Wahrnehmungsaufgaben wie geometrische und semantische Aufgaben unter Verwendung von faltbaren neuronalen Netzen. 2) Verwendung von Multi-Task-Learning zur Überwindung von Rechenengpässen durch die gemeinsame Nutzung von initialen Faltungsschichten zwischen den Aufgaben und die Entwicklung von Optimierungsstrategien, die die Aufgaben ausbalancieren.The formation of eyes led to the big bang of evolution. The dynamics changed from a primitive organism waiting for the food to come into contact for eating food being sought after by visual sensors. The human eye is one of the most sophisticated developments of evolution, but it still has defects. Humans have evolved a biological perception algorithm capable of driving cars, operating machinery, piloting aircraft, and navigating ships over millions of years. Automating these capabilities for computers is critical for various applications, including self-driving cars, augmented reality, and architectural surveying. Near-field visual perception in the context of self-driving cars can perceive the environment in a range of 0 - 10 meters and 360° coverage around the vehicle. It is a critical decision-making component in the development of safer automated driving. Recent advances in computer vision and deep learning, in conjunction with high-quality sensors such as cameras and LiDARs, have fueled mature visual perception solutions. Until now, far-field perception has been the primary focus. Another significant issue is the limited processing power available for developing real-time applications. Because of this bottleneck, there is frequently a trade-off between performance and run-time efficiency. We concentrate on the following issues in order to address them: 1) Developing near-field perception algorithms with high performance and low computational complexity for various visual perception tasks such as geometric and semantic tasks using convolutional neural networks. 2) Using Multi-Task Learning to overcome computational bottlenecks by sharing initial convolutional layers between tasks and developing optimization strategies that balance tasks

    Understanding Cityscapes: Efficient Urban Semantic Scene Understanding

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    Semantic scene understanding plays a prominent role in the environment perception of autonomous vehicles. The car needs to be aware of the semantics of its surroundings. In particular it needs to sense other vehicles, bicycles, or pedestrians in order to predict their behavior. Knowledge of the drivable space is required for safe navigation and landmarks, such as poles, or static infrastructure such as buildings, form the basis for precise localization. In this work, we focus on visual scene understanding since cameras offer great potential for perceiving semantics while being comparably cheap; we also focus on urban scenarios as fully autonomous vehicles are expected to appear first in inner-city traffic. However, this task also comes with significant challenges. While images are rich in information, the semantics are not readily available and need to be extracted by means of computer vision, typically via machine learning methods. Furthermore, modern cameras have high resolution sensors as needed for high sensing ranges. As a consequence, large amounts of data need to be processed, while the processing simultaneously requires real-time speeds with low latency. In addition, the resulting semantic environment representation needs to be compressed to allow for fast transmission and down-stream processing. Additional challenges for the perception system arise from the scene type as urban scenes are typically highly cluttered, containing many objects at various scales that are often significantly occluded. In this dissertation, we address efficient urban semantic scene understanding for autonomous driving under three major perspectives. First, we start with an analysis of the potential of exploiting multiple input modalities, such as depth, motion, or object detectors, for semantic labeling as these cues are typically available in autonomous vehicles. Our goal is to integrate such data holistically throughout all processing stages and we show that our system outperforms comparable baseline methods, which confirms the value of multiple input modalities. Second, we aim to leverage modern deep learning methods requiring large amounts of supervised training data for street scene understanding. Therefore, we introduce Cityscapes, the first large-scale dataset and benchmark for urban scene understanding in terms of pixel- and instance-level semantic labeling. Based on this work, we compare various deep learning methods in terms of their performance on inner-city scenarios facing the challenges introduced above. Leveraging these insights, we combine suitable methods to obtain a real-time capable neural network for pixel-level semantic labeling with high classification accuracy. Third, we combine our previous results and aim for an integration of depth data from stereo vision and semantic information from deep learning methods by means of the Stixel World (Pfeiffer and Franke, 2011). To this end, we reformulate the Stixel World as a graphical model that provides a clear formalism, based on which we extend the formulation to multiple input modalities. We obtain a compact representation of the environment at real-time speeds that carries semantic as well as 3D information
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