自动驾驶汽车必须能够可靠地处理不利的天气条件(例如,雪地)安全运行。在本文中,我们研究了以不利条件捕获的转动传感器输入(即图像)的想法,将其下游任务(例如,语义分割)可以达到高精度。先前的工作主要将其作为未配对的图像到图像翻译问题,因为缺乏在完全相同的相机姿势和语义布局下捕获的配对图像。虽然没有完美对准的图像,但可以轻松获得粗配上的图像。例如,许多人每天在好天气和不利的天气中驾驶相同的路线;因此,在近距离GPS位置捕获的图像可以形成一对。尽管来自重复遍历的数据不太可能捕获相同的前景对象,但我们认为它们提供了丰富的上下文信息来监督图像翻译模型。为此,我们提出了一个新颖的训练目标,利用了粗糙的图像对。我们表明,我们与一致的训练方案可提高更好的图像翻译质量和改进的下游任务,例如语义分割,单眼深度估计和视觉定位。
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由于大规模数据集的可用性,通常在特定位置和良好的天气条件下收集的大规模数据集,近年来,自动驾驶汽车的感知进展已加速。然而,为了达到高安全要求,这些感知系统必须在包括雪和雨在内的各种天气条件下进行稳健运行。在本文中,我们提出了一个新数据集,以通过新颖的数据收集过程启用强大的自动驾驶 - 在不同场景(Urban,Highway,乡村,校园),天气,雪,雨,阳光下,沿着15公里的路线反复记录数据),时间(白天/晚上)以及交通状况(行人,骑自行车的人和汽车)。该数据集包括来自摄像机和激光雷达传感器的图像和点云,以及高精度GPS/ins以在跨路线上建立对应关系。该数据集包括使用Amodal掩码捕获部分遮挡和3D边界框的道路和对象注释。我们通过分析基准在道路和对象,深度估计和3D对象检测中的性能来证明该数据集的独特性。重复的路线为对象发现,持续学习和异常检测打开了新的研究方向。链接到ITHACA365:https://ithaca365.mae.cornell.edu/
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形状和姿势估计是自动驾驶汽车充分了解其周围环境的关键感知问题。解决此问题的一个基本挑战是不完整的传感器信号(例如Lidar扫描),尤其是对于遥远或遮挡的物体。在本文中,我们提出了一种新的算法来应对这一挑战,该挑战明确利用了连续捕获的传感器信号:连续信号可以提供有关对象的更多信息,包括不同的观点及其运动。通过通过经常性神经网络编码连续的信号,我们的算法不仅可以改善形状和姿势估计,而且还会产生一种标签工具,可以使自主驱动研究中的其他任务受益。具体而言,在我们的算法上,我们提出了一条新型的管道,以自动注释高质量的标签,以进行图像上的Amodal分割,这很难手动注释。我们的代码和数据将公开可用。
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Detecting anomalous data within time series is a very relevant task in pattern recognition and machine learning, with many possible applications that range from disease prevention in medicine, e.g., detecting early alterations of the health status before it can clearly be defined as "illness" up to monitoring industrial plants. Regarding this latter application, detecting anomalies in an industrial plant's status firstly prevents serious damages that would require a long interruption of the production process. Secondly, it permits optimal scheduling of maintenance interventions by limiting them to urgent situations. At the same time, they typically follow a fixed prudential schedule according to which components are substituted well before the end of their expected lifetime. This paper describes a case study regarding the monitoring of the status of Laser-guided Vehicles (LGVs) batteries, on which we worked as our contribution to project SUPER (Supercomputing Unified Platform, Emilia Romagna) aimed at establishing and demonstrating a regional High-Performance Computing platform that is going to represent the main Italian supercomputing environment for both computing power and data volume.
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This paper is about the design of an automated machine to cut turbot fish specimens. Machine vision is a key part of this project as it is used to compute a cutting curve for the specimen head. This task is impossible to be carried out by mechanical means. Machine vision is used to detect head boundary and a robot is used to cut the head. Binarization and mathematical morphology are used to detect fish boundary and this boundary is subsequently analyzed (using Hough transform and convex hull) to detect key points and thus defining the cutting curve. Afterwards, mechanical systems are used to slice fish to get an easy presentation for end consumer (as fish fillets than can be easily marketed and consumed).
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The unfolding of detector effects is crucial for the comparison of data to theory predictions. While traditional methods are limited to representing the data in a low number of dimensions, machine learning has enabled new unfolding techniques while retaining the full dimensionality. Generative networks like invertible neural networks~(INN) enable a probabilistic unfolding, which map individual events to their corresponding unfolded probability distribution. The accuracy of such methods is however limited by how well simulated training samples model the actual data that is unfolded. We introduce the iterative conditional INN~(IcINN) for unfolding that adjusts for deviations between simulated training samples and data. The IcINN unfolding is first validated on toy data and then applied to pseudo-data for the $pp \to Z \gamma \gamma$ process.
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In this paper, we consider incorporating data associated with the sun's north and south polar field strengths to improve solar flare prediction performance using machine learning models. When used to supplement local data from active regions on the photospheric magnetic field of the sun, the polar field data provides global information to the predictor. While such global features have been previously proposed for predicting the next solar cycle's intensity, in this paper we propose using them to help classify individual solar flares. We conduct experiments using HMI data employing four different machine learning algorithms that can exploit polar field information. Additionally, we propose a novel probabilistic mixture of experts model that can simply and effectively incorporate polar field data and provide on-par prediction performance with state-of-the-art solar flare prediction algorithms such as the Recurrent Neural Network (RNN). Our experimental results indicate the usefulness of the polar field data for solar flare prediction, which can improve Heidke Skill Score (HSS2) by as much as 10.1%.
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Predicting drug side-effects before they occur is a key task in keeping the number of drug-related hospitalizations low and to improve drug discovery processes. Automatic predictors of side-effects generally are not able to process the structure of the drug, resulting in a loss of information. Graph neural networks have seen great success in recent years, thanks to their ability of exploiting the information conveyed by the graph structure and labels. These models have been used in a wide variety of biological applications, among which the prediction of drug side-effects on a large knowledge graph. Exploiting the molecular graph encoding the structure of the drug represents a novel approach, in which the problem is formulated as a multi-class multi-label graph-focused classification. We developed a methodology to carry out this task, using recurrent Graph Neural Networks, and building a dataset from freely accessible and well established data sources. The results show that our method has an improved classification capability, under many parameters and metrics, with respect to previously available predictors.
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Machine Learning (ML) technologies have been increasingly adopted in Medical Cyber-Physical Systems (MCPS) to enable smart healthcare. Assuring the safety and effectiveness of learning-enabled MCPS is challenging, as such systems must account for diverse patient profiles and physiological dynamics and handle operational uncertainties. In this paper, we develop a safety assurance case for ML controllers in learning-enabled MCPS, with an emphasis on establishing confidence in the ML-based predictions. We present the safety assurance case in detail for Artificial Pancreas Systems (APS) as a representative application of learning-enabled MCPS, and provide a detailed analysis by implementing a deep neural network for the prediction in APS. We check the sufficiency of the ML data and analyze the correctness of the ML-based prediction using formal verification. Finally, we outline open research problems based on our experience in this paper.
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Labelling a large quantity of social media data for the task of supervised machine learning is not only time-consuming but also difficult and expensive. On the other hand, the accuracy of supervised machine learning models is strongly related to the quality of the labelled data on which they train, and automatic sentiment labelling techniques could reduce the time and cost of human labelling. We have compared three automatic sentiment labelling techniques: TextBlob, Vader, and Afinn to assign sentiments to tweets without any human assistance. We compare three scenarios: one uses training and testing datasets with existing ground truth labels; the second experiment uses automatic labels as training and testing datasets; and the third experiment uses three automatic labelling techniques to label the training dataset and uses the ground truth labels for testing. The experiments were evaluated on two Twitter datasets: SemEval-2013 (DS-1) and SemEval-2016 (DS-2). Results show that the Afinn labelling technique obtains the highest accuracy of 80.17% (DS-1) and 80.05% (DS-2) using a BiLSTM deep learning model. These findings imply that automatic text labelling could provide significant benefits, and suggest a feasible alternative to the time and cost of human labelling efforts.
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