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Object Detection from a Vehicle Using Deep Learning Network and Future Integration with Multi-Sensor Fusion Algorithm

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Academic year: 2021

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Figure

Figure 1 delineates the proposed multi-sensor based  fusion and deep learning methodology aimed for this  research
Fig. 3 shows six examples of test images labeled by “car”
Figure 5: Accuracy of detecting pedestrians with best  probability of matching this class listed under each image

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