Google DeepLabV3 is a deep learning model for semantic image segmentation. It identifies and classifies each pixel in an image, effectively distinguishing different objects and regions within the image.
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About Google DeepLabV3
Google DeepLabV3 was developed by researchers at Google in 2017. It aimed to improve the accuracy and efficiency of semantic image segmentation by utilizing deep convolutional neural networks.
Strengths of Google DeepLabV3 include high accuracy in semantic segmentation and efficient performance on various image datasets. Weaknesses involve high computational requirements and potential difficulty in real-time applications. Competitors include Mask R-CNN, U-Net, and FCN (Fully Convolutional Networks).
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How to hire a Google DeepLabV3 expert
A Google DeepLabV3 expert must have skills in deep learning, specifically in convolutional neural networks (CNNs), proficiency in Python programming, experience with TensorFlow or PyTorch, and knowledge of image processing and computer vision techniques.
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$ 224K
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$ 127K
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$ 97K
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