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Is Telepathy Possible? Perhaps, Due To New Technology

Telepathy is generally considered pure science fiction; fun, but never something that will actually happen. But new research suggests we may be closer than we think.

Revolutionizing grape cultivation: AS-SwinT and the future of automated berry thinning

Revolutionizing grape cultivation: AS-SwinT and the future of automated berry thinning
phys.org - get the latest breaking news, showbiz & celebrity photos, sport news & rumours, viral videos and top stories from phys.org Daily Mail and Mail on Sunday newspapers.

MyJournals org - Science - Remote Sensing, Vol 15, Pages 3417: Bi-Objective Crop Mapping from Sentinel-2 Images Based on Multiple Deep Learning Networks (Remote Sensing)

MyJournals.org - Science - Remote Sensing, Vol. 15, Pages 3417: Bi-Objective Crop Mapping from Sentinel-2 Images Based on Multiple Deep Learning Networks (Remote Sensing)

D-net: A generalised and optimised deep network for monocular depth es by Joshua Luke Thompson, Son Lam Phung et al

Depth estimation is an essential component in computer vision systems for achieving 3D scene understanding. Efficient and accurate depth map estimation has numerous applications including self-driving vehicles and virtual reality tools. This paper presents a new deep network, called D-Net, for depth estimation from a single RGB image. The proposed network can be trained end-to-end, and its structure can be customised to meet different requirements in model size, speed, and prediction accuracy. Our approach gathers strong global and local contextual features at multiple resolutions, and then transfers these to high resolutions for clearer depth maps. For the encoder backbone, D-Net can utilise many state-of-the-art models including EfficientNet, HRNet and Swin Transformer to obtain dense depth maps. The proposed D-net is designed to have minimal parameters and reduced computational complexity. Extensive evaluations on the NYUv2 and KITTI benchmark datasets show that our model is highly

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