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Europe's biggest bat captures and devours birds while flying
Breakthroughs, discoveries, and DIY tips sent every weekday. It's hard to think of a spookier wildlife scenario: A songbird is flying through the air, when it's suddenly intercepted from above at breakneck speed by a large, fanged bat . After a brief struggle, the attacker disappears into the gloom with its bloody prey in tow. But for over two decades, biologists have suspected that these events are even darker than that scary situation. And thanks to tiny bat "backpacks," experts have now confirmed their nightmarish theory.
The alpha-beta divergence for real and complex data
Divergences are fundamental to the information criteria that underpin most signal processing algorithms. The alpha-beta family of divergences, designed for non-negative data, offers a versatile framework that parameterizes and continuously interpolates several separable divergences found in existing literature. This work extends the definition of alpha-beta divergences to accommodate complex data, specifically when the arguments of the divergence are complex vectors. This novel formulation is designed in such a way that, by setting the divergence hyperparameters to unity, it particularizes to the well-known Euclidean and Mahalanobis squared distances. Other choices of hyperparameters yield practical separable and non-separable extensions of several classical divergences. In the context of the problem of approximating a complex random vector, the centroid obtained by optimizing the alpha-beta mean distortion has a closed-form expression, which interpretation sheds light on the distinct roles of the divergence hyperparameters. These contributions may have wide potential applicability, as there are many signal processing domains in which the underlying data are inherently complex.
Irredundant $k$-Fold Cross-Validation
In traditional k-fold cross-validation, each instance is used ($k-1$) times for training and once for testing, leading to redundancy that lets many instances disproportionately influence the learning phase. We introduce Irredundant $k$-fold cross-validation, a novel method that guarantees each instance is used exactly once for training and once for testing across the entire validation procedure. This approach ensures a more balanced utilization of the dataset, mitigates overfitting due to instance repetition, and enables sharper distinctions in comparative model analysis. The method preserves stratification and remains model-agnostic, i.e., compatible with any classifier. Experimental results demonstrate that it delivers consistent performance estimates across diverse datasets -- comparable to $k$-fold cross-validation -- while providing less optimistic variance estimates because training partitions are non-overlapping, and significantly reducing the overall computational cost.
Multi-robot Aerial Soft Manipulator For Floating Litter Collection
González-Morgado, Antonio, Smits, Sander, Heredia, Guillermo, Ollero, Anibal, Krupa, Alexandre, Chaumette, François, Spindler, Fabien, Franchi, Antonio, Gabellieri, Chiara
--Removing floating litter from water bodies is crucial to preserving aquatic ecosystems and preventing environmental pollution. In this work, we present a multi-robot aerial soft manipulator for floating litter collection, leveraging the capabilities of aerial robots. The proposed system consists of two aerial robots connected by a flexible rope manipulator, which collects floating litter using a hook-based tool. Compared to single-aerial-robot solutions, the use of two aerial robots increases payload capacity and flight endurance while reducing the downwash effect at the manipulation point, located at the midpoint of the rope. Additionally, we employ an optimization-based rope-shape planner to compute the desired rope shape. The planner incorporates an adaptive behavior that maximizes grasping capabilities near the litter while minimizing rope tension when farther away. The computed rope shape trajectory is controlled by a shape visual servoing controller, which approximates the rope as a parabola. The complete system is validated in outdoor experiments, demonstrating successful grasping operations. An ablation study highlights how the planner's adaptive mechanism improves the success rate of the operation. Furthermore, real-world tests in a water channel confirm the effectiveness of our system in floating litter collection. These results demonstrate the potential of aerial robots for autonomous litter removal in aquatic environments. In 2019, 353 million tonnes of plastic waste was generated, only 9% of which was recycled, while 22% was mismanaged, with a considerable portion of it ending up in water. The best solutions to plastic pollution include preventing it from entering the environment, e.g., by limiting single-use plastic, and improving plastic management [1].