Detect objects using Fast R-CNN object detector configured for monocular camera
detects objects within image bboxes
= detect(detector
,I
)I
using a Fast R-CNN (regions with
convolutional neural networks) object detector configured for a monocular camera. The
locations of objects detected are returned as a set of bounding boxes.
When using this function, use of a CUDA®-enabled NVIDIA® GPU with a compute capability of 3.0 or higher is highly recommended. The GPU reduces computation time significantly. Usage of the GPU requires Parallel Computing Toolbox™.
[___,
also returns a categorical array of labels assigned to the bounding boxes, using any of
the preceding syntaxes. The labels used for object classes are defined during training
using the labels
] = detect(detector
,I
)trainFastRCNNObjectDetector
(Computer Vision Toolbox)
function.
[___] = detect(___,
detects objects within the rectangular search region specified by
roi
)roi
.
detects objects within the series of images returned by the detectionResults
= detect(detector
,ds
)read
(Computer Vision Toolbox) function
of the input datastore.
[___] = detect(___,
specifies options using one or more Name,Value
)Name,Value
pair arguments. For
example, detect(detector,I,'NumStongestRegions',1000)
limits the number
of strongest region proposals to 1000.
configureDetectorMonoCamera
| selectStrongestBboxMulticlass
(Computer Vision Toolbox) | trainFastRCNNObjectDetector
(Computer Vision Toolbox)