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Description: Our platform can identify every single object based on the input data. This work aims to improve the present model's detection accuracy rate by analyzing films for items. To "see" the bigger picture, we implement a specialized dark web CNN algorithm. The YOLO technique can also be used to anticipate the likelihood of a full image, making it ideal for speedy real-time object recognition. The suggested approach can estimate the object's size with much greater precision. Merging a tailored dark net convolutional neural network with the YOLO algorithm provides an efficient approach for estimating object scale. As mentioned in the section on object localization, the method first grids the image and then applies the image classification and localization technique to each cell. The entire image can be processed by this method. The detection accuracy is also improved by combining the coco model with the tensor flow.

License: CC-By Attribution 4.0 International


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