1 .. SPDX-License-Identifier: GPL-2.0
3 .. include:: <isonum.txt>
5 ===============================================================
6 Intel Image Processing Unit 3 (IPU3) Imaging Unit (ImgU) driver
7 ===============================================================
9 Copyright |copy| 2018 Intel Corporation
14 This file documents the Intel IPU3 (3rd generation Image Processing Unit)
15 Imaging Unit drivers located under drivers/media/pci/intel/ipu3 (CIO2) as well
16 as under drivers/staging/media/ipu3 (ImgU).
18 The Intel IPU3 found in certain Kaby Lake (as well as certain Sky Lake)
19 platforms (U/Y processor lines) is made up of two parts namely the Imaging Unit
20 (ImgU) and the CIO2 device (MIPI CSI2 receiver).
22 The CIO2 device receives the raw Bayer data from the sensors and outputs the
23 frames in a format that is specific to the IPU3 (for consumption by the IPU3
24 ImgU). The CIO2 driver is available as drivers/media/pci/intel/ipu3/ipu3-cio2*
25 and is enabled through the CONFIG_VIDEO_IPU3_CIO2 config option.
27 The Imaging Unit (ImgU) is responsible for processing images captured
28 by the IPU3 CIO2 device. The ImgU driver sources can be found under
29 drivers/staging/media/ipu3 directory. The driver is enabled through the
30 CONFIG_VIDEO_IPU3_IMGU config option.
32 The two driver modules are named ipu3_csi2 and ipu3_imgu, respectively.
34 The drivers has been tested on Kaby Lake platforms (U/Y processor lines).
36 Both of the drivers implement V4L2, Media Controller and V4L2 sub-device
37 interfaces. The IPU3 CIO2 driver supports camera sensors connected to the CIO2
38 MIPI CSI-2 interfaces through V4L2 sub-device sensor drivers.
43 The CIO2 is represented as a single V4L2 subdev, which provides a V4L2 subdev
44 interface to the user space. There is a video node for each CSI-2 receiver,
45 with a single media controller interface for the entire device.
47 The CIO2 contains four independent capture channel, each with its own MIPI CSI-2
48 receiver and DMA engine. Each channel is modelled as a V4L2 sub-device exposed
49 to userspace as a V4L2 sub-device node and has two pads:
51 .. tabularcolumns:: |p{0.8cm}|p{4.0cm}|p{4.0cm}|
61 - MIPI CSI-2 input, connected to the sensor subdev
65 - Raw video capture, connected to the V4L2 video interface
67 The V4L2 video interfaces model the DMA engines. They are exposed to userspace
68 as V4L2 video device nodes.
70 Capturing frames in raw Bayer format
71 ------------------------------------
73 CIO2 MIPI CSI2 receiver is used to capture frames (in packed raw Bayer format)
74 from the raw sensors connected to the CSI2 ports. The captured frames are used
75 as input to the ImgU driver.
77 Image processing using IPU3 ImgU requires tools such as raw2pnm [#f1]_, and
78 yavta [#f2]_ due to the following unique requirements and / or features specific
81 -- The IPU3 CSI2 receiver outputs the captured frames from the sensor in packed
82 raw Bayer format that is specific to IPU3.
84 -- Multiple video nodes have to be operated simultaneously.
86 Let us take the example of ov5670 sensor connected to CSI2 port 0, for a
87 2592x1944 image capture.
89 Using the media controller APIs, the ov5670 sensor is configured to send
90 frames in packed raw Bayer format to IPU3 CSI2 receiver.
94 # This example assumes /dev/media0 as the CIO2 media device
95 export MDEV=/dev/media0
97 # and that ov5670 sensor is connected to i2c bus 10 with address 0x36
98 export SDEV=$(media-ctl -d $MDEV -e "ov5670 10-0036")
100 # Establish the link for the media devices using media-ctl [#f3]_
101 media-ctl -d $MDEV -l "ov5670:0 -> ipu3-csi2 0:0[1]"
103 # Set the format for the media devices
104 media-ctl -d $MDEV -V "ov5670:0 [fmt:SGRBG10/2592x1944]"
105 media-ctl -d $MDEV -V "ipu3-csi2 0:0 [fmt:SGRBG10/2592x1944]"
106 media-ctl -d $MDEV -V "ipu3-csi2 0:1 [fmt:SGRBG10/2592x1944]"
108 Once the media pipeline is configured, desired sensor specific settings
109 (such as exposure and gain settings) can be set, using the yavta tool.
115 yavta -w 0x009e0903 444 $SDEV
116 yavta -w 0x009e0913 1024 $SDEV
117 yavta -w 0x009e0911 2046 $SDEV
119 Once the desired sensor settings are set, frame captures can be done as below.
125 yavta --data-prefix -u -c10 -n5 -I -s2592x1944 --file=/tmp/frame-#.bin \
126 -f IPU3_SGRBG10 $(media-ctl -d $MDEV -e "ipu3-cio2 0")
128 With the above command, 10 frames are captured at 2592x1944 resolution, with
129 sGRBG10 format and output as IPU3_SGRBG10 format.
131 The captured frames are available as /tmp/frame-#.bin files.
136 The ImgU is represented as two V4L2 subdevs, each of which provides a V4L2
137 subdev interface to the user space.
139 Each V4L2 subdev represents a pipe, which can support a maximum of 2 streams.
140 This helps to support advanced camera features like Continuous View Finder (CVF)
141 and Snapshot During Video(SDV).
143 The ImgU contains two independent pipes, each modelled as a V4L2 sub-device
144 exposed to userspace as a V4L2 sub-device node.
146 Each pipe has two sink pads and three source pads for the following purpose:
148 .. tabularcolumns:: |p{0.8cm}|p{4.0cm}|p{4.0cm}|
158 - Input raw video stream
162 - Processing parameters
166 - Output processed video stream
170 - Output viewfinder video stream
176 Each pad is connected to a corresponding V4L2 video interface, exposed to
177 userspace as a V4L2 video device node.
182 With ImgU, once the input video node ("ipu3-imgu 0/1":0, in
183 <entity>:<pad-number> format) is queued with buffer (in packed raw Bayer
184 format), ImgU starts processing the buffer and produces the video output in YUV
185 format and statistics output on respective output nodes. The driver is expected
186 to have buffers ready for all of parameter, output and statistics nodes, when
187 input video node is queued with buffer.
189 At a minimum, all of input, main output, 3A statistics and viewfinder
190 video nodes should be enabled for IPU3 to start image processing.
192 Each ImgU V4L2 subdev has the following set of video nodes.
194 input, output and viewfinder video nodes
195 ----------------------------------------
197 The frames (in packed raw Bayer format specific to the IPU3) received by the
198 input video node is processed by the IPU3 Imaging Unit and are output to 2 video
199 nodes, with each targeting a different purpose (main output and viewfinder
202 Details onand the Bayer format specific to the IPU3 can be found in
203 :ref:`v4l2-pix-fmt-ipu3-sbggr10`.
205 The driver supports V4L2 Video Capture Interface as defined at :ref:`devices`.
207 Only the multi-planar API is supported. More details can be found at
210 Parameters video node
211 ---------------------
213 The parameters video node receives the ImgU algorithm parameters that are used
214 to configure how the ImgU algorithms process the image.
216 Details on processing parameters specific to the IPU3 can be found in
217 :ref:`v4l2-meta-fmt-params`.
219 3A statistics video node
220 ------------------------
222 3A statistics video node is used by the ImgU driver to output the 3A (auto
223 focus, auto exposure and auto white balance) statistics for the frames that are
224 being processed by the ImgU to user space applications. User space applications
225 can use this statistics data to compute the desired algorithm parameters for
228 Configuring the Intel IPU3
229 ==========================
231 The IPU3 ImgU pipelines can be configured using the Media Controller, defined at
232 :ref:`media_controller`.
234 Running mode and firmware binary selection
235 ------------------------------------------
237 ImgU works based on firmware, currently the ImgU firmware support run 2 pipes
238 in time-sharing with single input frame data. Each pipe can run at certain mode
239 - "VIDEO" or "STILL", "VIDEO" mode is commonly used for video frames capture,
240 and "STILL" is used for still frame capture. However, you can also select
241 "VIDEO" to capture still frames if you want to capture images with less system
242 load and power. For "STILL" mode, ImgU will try to use smaller BDS factor and
243 output larger bayer frame for further YUV processing than "VIDEO" mode to get
244 high quality images. Besides, "STILL" mode need XNR3 to do noise reduction,
245 hence "STILL" mode will need more power and memory bandwidth than "VIDEO" mode.
246 TNR will be enabled in "VIDEO" mode and bypassed by "STILL" mode. ImgU is
247 running at "VIDEO" mode by default, the user can use v4l2 control
248 V4L2_CID_INTEL_IPU3_MODE (currently defined in
249 drivers/staging/media/ipu3/include/uapi/intel-ipu3.h) to query and set the
250 running mode. For user, there is no difference for buffer queueing between the
251 "VIDEO" and "STILL" mode, mandatory input and main output node should be
252 enabled and buffers need be queued, the statistics and the view-finder queues
255 The firmware binary will be selected according to current running mode, such log
256 "using binary if_to_osys_striped " or "using binary if_to_osys_primary_striped"
257 could be observed if you enable the ImgU dynamic debug, the binary
258 if_to_osys_striped is selected for "VIDEO" and the binary
259 "if_to_osys_primary_striped" is selected for "STILL".
262 Processing the image in raw Bayer format
263 ----------------------------------------
265 Configuring ImgU V4L2 subdev for image processing
266 ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
268 The ImgU V4L2 subdevs have to be configured with media controller APIs to have
269 all the video nodes setup correctly.
271 Let us take "ipu3-imgu 0" subdev as an example.
275 media-ctl -d $MDEV -r
276 media-ctl -d $MDEV -l "ipu3-imgu 0 input":0 -> "ipu3-imgu 0":0[1]
277 media-ctl -d $MDEV -l "ipu3-imgu 0":2 -> "ipu3-imgu 0 output":0[1]
278 media-ctl -d $MDEV -l "ipu3-imgu 0":3 -> "ipu3-imgu 0 viewfinder":0[1]
279 media-ctl -d $MDEV -l "ipu3-imgu 0":4 -> "ipu3-imgu 0 3a stat":0[1]
281 Also the pipe mode of the corresponding V4L2 subdev should be set as desired
282 (e.g 0 for video mode or 1 for still mode) through the control id 0x009819a1 as
287 yavta -w "0x009819A1 1" /dev/v4l-subdev7
289 Certain hardware blocks in ImgU pipeline can change the frame resolution by
290 cropping or scaling, these hardware blocks include Input Feeder(IF), Bayer Down
291 Scaler (BDS) and Geometric Distortion Correction (GDC).
292 There is also a block which can change the frame resolution - YUV Scaler, it is
293 only applicable to the secondary output.
295 RAW Bayer frames go through these ImgU pipeline hardware blocks and the final
296 processed image output to the DDR memory.
298 .. kernel-figure:: ipu3_rcb.svg
299 :alt: ipu3 resolution blocks image
301 IPU3 resolution change hardware blocks
305 Input Feeder gets the Bayer frame data from the sensor, it can enable cropping
306 of lines and columns from the frame and then store pixels into device's internal
307 pixel buffer which are ready to readout by following blocks.
309 **Bayer Down Scaler**
311 Bayer Down Scaler is capable of performing image scaling in Bayer domain, the
312 downscale factor can be configured from 1X to 1/4X in each axis with
313 configuration steps of 0.03125 (1/32).
315 **Geometric Distortion Correction**
317 Geometric Distortion Correction is used to perform correction of distortions
318 and image filtering. It needs some extra filter and envelope padding pixels to
319 work, so the input resolution of GDC should be larger than the output
324 YUV Scaler which similar with BDS, but it is mainly do image down scaling in
325 YUV domain, it can support up to 1/12X down scaling, but it can not be applied
328 The ImgU V4L2 subdev has to be configured with the supported resolutions in all
329 the above hardware blocks, for a given input resolution.
330 For a given supported resolution for an input frame, the Input Feeder, Bayer
331 Down Scaler and GDC blocks should be configured with the supported resolutions
332 as each hardware block has its own alignment requirement.
334 You must configure the output resolution of the hardware blocks smartly to meet
335 the hardware requirement along with keeping the maximum field of view. The
336 intermediate resolutions can be generated by specific tool -
338 https://github.com/intel/intel-ipu3-pipecfg
340 This tool can be used to generate intermediate resolutions. More information can
341 be obtained by looking at the following IPU3 ImgU configuration table.
343 https://chromium.googlesource.com/chromiumos/overlays/board-overlays/+/master
345 Under baseboard-poppy/media-libs/cros-camera-hal-configs-poppy/files/gcss
346 directory, graph_settings_ov5670.xml can be used as an example.
348 The following steps prepare the ImgU pipeline for the image processing.
350 1. The ImgU V4L2 subdev data format should be set by using the
351 VIDIOC_SUBDEV_S_FMT on pad 0, using the GDC width and height obtained above.
353 2. The ImgU V4L2 subdev cropping should be set by using the
354 VIDIOC_SUBDEV_S_SELECTION on pad 0, with V4L2_SEL_TGT_CROP as the target,
355 using the input feeder height and width.
357 3. The ImgU V4L2 subdev composing should be set by using the
358 VIDIOC_SUBDEV_S_SELECTION on pad 0, with V4L2_SEL_TGT_COMPOSE as the target,
359 using the BDS height and width.
361 For the ov5670 example, for an input frame with a resolution of 2592x1944
362 (which is input to the ImgU subdev pad 0), the corresponding resolutions
363 for input feeder, BDS and GDC are 2592x1944, 2592x1944 and 2560x1920
366 Once this is done, the received raw Bayer frames can be input to the ImgU
367 V4L2 subdev as below, using the open source application v4l2n [#f1]_.
369 For an image captured with 2592x1944 [#f4]_ resolution, with desired output
370 resolution as 2560x1920 and viewfinder resolution as 2560x1920, the following
371 v4l2n command can be used. This helps process the raw Bayer frames and produces
372 the desired results for the main output image and the viewfinder output, in NV12
377 v4l2n --pipe=4 --load=/tmp/frame-#.bin --open=/dev/video4
378 --fmt=type:VIDEO_OUTPUT_MPLANE,width=2592,height=1944,pixelformat=0X47337069 \
379 --reqbufs=type:VIDEO_OUTPUT_MPLANE,count:1 --pipe=1 \
380 --output=/tmp/frames.out --open=/dev/video5 \
381 --fmt=type:VIDEO_CAPTURE_MPLANE,width=2560,height=1920,pixelformat=NV12 \
382 --reqbufs=type:VIDEO_CAPTURE_MPLANE,count:1 --pipe=2 \
383 --output=/tmp/frames.vf --open=/dev/video6 \
384 --fmt=type:VIDEO_CAPTURE_MPLANE,width=2560,height=1920,pixelformat=NV12 \
385 --reqbufs=type:VIDEO_CAPTURE_MPLANE,count:1 --pipe=3 --open=/dev/video7 \
386 --output=/tmp/frames.3A --fmt=type:META_CAPTURE,? \
387 --reqbufs=count:1,type:META_CAPTURE --pipe=1,2,3,4 --stream=5
389 You can also use yavta [#f2]_ command to do same thing as above:
393 yavta --data-prefix -Bcapture-mplane -c10 -n5 -I -s2592x1944 \
394 --file=frame-#.out-f NV12 /dev/video5 & \
395 yavta --data-prefix -Bcapture-mplane -c10 -n5 -I -s2592x1944 \
396 --file=frame-#.vf -f NV12 /dev/video6 & \
397 yavta --data-prefix -Bmeta-capture -c10 -n5 -I \
398 --file=frame-#.3a /dev/video7 & \
399 yavta --data-prefix -Boutput-mplane -c10 -n5 -I -s2592x1944 \
400 --file=/tmp/frame-in.cio2 -f IPU3_SGRBG10 /dev/video4
402 where /dev/video4, /dev/video5, /dev/video6 and /dev/video7 devices point to
403 input, output, viewfinder and 3A statistics video nodes respectively.
405 Converting the raw Bayer image into YUV domain
406 ----------------------------------------------
408 The processed images after the above step, can be converted to YUV domain
416 raw2pnm -x2560 -y1920 -fNV12 /tmp/frames.out /tmp/frames.out.ppm
418 where 2560x1920 is output resolution, NV12 is the video format, followed
419 by input frame and output PNM file.
421 Viewfinder output frames
422 ~~~~~~~~~~~~~~~~~~~~~~~~
426 raw2pnm -x2560 -y1920 -fNV12 /tmp/frames.vf /tmp/frames.vf.ppm
428 where 2560x1920 is output resolution, NV12 is the video format, followed
429 by input frame and output PNM file.
431 Example user space code for IPU3
432 ================================
434 User space code that configures and uses IPU3 is available here.
436 https://chromium.googlesource.com/chromiumos/platform/arc-camera/+/master/
438 The source can be located under hal/intel directory.
440 Overview of IPU3 pipeline
441 =========================
443 IPU3 pipeline has a number of image processing stages, each of which takes a
444 set of parameters as input. The major stages of pipelines are shown here:
446 .. kernel-render:: DOT
447 :alt: IPU3 ImgU Pipeline
448 :caption: IPU3 ImgU Pipeline Diagram
450 digraph "IPU3 ImgU" {
455 a [label="Raw pixels"]
456 b [label="Bayer Downscaling"]
457 c [label="Optical Black Correction"]
458 d [label="Linearization"]
459 e [label="Lens Shading Correction"]
460 f [label="White Balance / Exposure / Focus Apply"]
461 g [label="Bayer Noise Reduction"]
463 i [label="Demosaicing"]
464 j [label="Color Correction Matrix"]
465 k [label="Gamma correction"]
466 l [label="Color Space Conversion"]
467 m [label="Chroma Down Scaling"]
468 n [label="Chromatic Noise Reduction"]
469 o [label="Total Color Correction"]
472 r [label="DDR", style=filled, fillcolor=yellow, shape=cylinder]
473 s [label="YUV Downscaling"]
474 t [label="DDR", style=filled, fillcolor=yellow, shape=cylinder]
476 { rank=same; a -> b -> c -> d -> e -> f -> g -> h -> i }
477 { rank=same; j -> k -> l -> m -> n -> o -> p -> q -> s -> t}
479 a -> j [style=invis, weight=10]
484 The table below presents a description of the above algorithms.
486 ======================== =======================================================
488 ======================== =======================================================
489 Optical Black Correction Optical Black Correction block subtracts a pre-defined
490 value from the respective pixel values to obtain better
492 Defined in struct ipu3_uapi_obgrid_param.
493 Linearization This algo block uses linearization parameters to
494 address non-linearity sensor effects. The Lookup table
496 struct ipu3_uapi_isp_lin_vmem_params.
497 SHD Lens shading correction is used to correct spatial
498 non-uniformity of the pixel response due to optical
499 lens shading. This is done by applying a different gain
500 for each pixel. The gain, black level etc are
501 configured in struct ipu3_uapi_shd_config_static.
502 BNR Bayer noise reduction block removes image noise by
503 applying a bilateral filter.
504 See struct ipu3_uapi_bnr_static_config for details.
505 ANR Advanced Noise Reduction is a block based algorithm
506 that performs noise reduction in the Bayer domain. The
507 convolution matrix etc can be found in
508 struct ipu3_uapi_anr_config.
509 DM Demosaicing converts raw sensor data in Bayer format
510 into RGB (Red, Green, Blue) presentation. Then add
511 outputs of estimation of Y channel for following stream
512 processing by Firmware. The struct is defined as
513 struct ipu3_uapi_dm_config.
514 Color Correction Color Correction algo transforms sensor specific color
515 space to the standard "sRGB" color space. This is done
516 by applying 3x3 matrix defined in
517 struct ipu3_uapi_ccm_mat_config.
518 Gamma correction Gamma correction struct ipu3_uapi_gamma_config is a
519 basic non-linear tone mapping correction that is
520 applied per pixel for each pixel component.
521 CSC Color space conversion transforms each pixel from the
522 RGB primary presentation to YUV (Y: brightness,
523 UV: Luminance) presentation. This is done by applying
524 a 3x3 matrix defined in
525 struct ipu3_uapi_csc_mat_config
526 CDS Chroma down sampling
527 After the CSC is performed, the Chroma Down Sampling
528 is applied for a UV plane down sampling by a factor
529 of 2 in each direction for YUV 4:2:0 using a 4x2
530 configurable filter struct ipu3_uapi_cds_params.
531 CHNR Chroma noise reduction
532 This block processes only the chrominance pixels and
533 performs noise reduction by cleaning the high
535 See struct struct ipu3_uapi_yuvp1_chnr_config.
536 TCC Total color correction as defined in struct
537 struct ipu3_uapi_yuvp2_tcc_static_config.
538 XNR3 eXtreme Noise Reduction V3 is the third revision of
539 noise reduction algorithm used to improve image
540 quality. This removes the low frequency noise in the
541 captured image. Two related structs are being defined,
542 struct ipu3_uapi_isp_xnr3_params for ISP data memory
543 and struct ipu3_uapi_isp_xnr3_vmem_params for vector
545 TNR Temporal Noise Reduction block compares successive
546 frames in time to remove anomalies / noise in pixel
547 values. struct ipu3_uapi_isp_tnr3_vmem_params and
548 struct ipu3_uapi_isp_tnr3_params are defined for ISP
549 vector and data memory respectively.
550 ======================== =======================================================
552 Other often encountered acronyms not listed in above table:
557 Auto white balance filter response statistics
559 Bayer downscaler parameters
561 Color correction matrix coefficients
563 Image enhancement filter directed
565 Optical black level compensation
567 Output system configuration
575 A few stages of the pipeline will be executed by firmware running on the ISP
576 processor, while many others will use a set of fixed hardware blocks also
577 called accelerator cluster (ACC) to crunch pixel data and produce statistics.
579 ACC parameters of individual algorithms, as defined by
580 struct ipu3_uapi_acc_param, can be chosen to be applied by the user
581 space through struct struct ipu3_uapi_flags embedded in
582 struct ipu3_uapi_params structure. For parameters that are configured as
583 not enabled by the user space, the corresponding structs are ignored by the
584 driver, in which case the existing configuration of the algorithm will be
590 .. [#f5] drivers/staging/media/ipu3/include/uapi/intel-ipu3.h
592 .. [#f1] https://github.com/intel/nvt
594 .. [#f2] http://git.ideasonboard.org/yavta.git
596 .. [#f3] http://git.ideasonboard.org/?p=media-ctl.git;a=summary
598 .. [#f4] ImgU limitation requires an additional 16x16 for all input resolutions