Mercurial > hg > aimc
view trunk/matlab/bmm/carfac/SAI_DesignLayers.m @ 617:2767ce76a1b0
Minor tweaks to AGC params, state update, and hacking script.
author | dicklyon@google.com |
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date | Thu, 09 May 2013 18:24:51 +0000 |
parents | 2b2ef398b557 |
children | 2e456754fe20 |
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% Copyright 2013, Google, Inc. % Author: Richard F. Lyon % % This Matlab file is part of an implementation of Lyon's cochlear model: % "Cascade of Asymmetric Resonators with Fast-Acting Compression" % to supplement Lyon's upcoming book "Human and Machine Hearing" % % Licensed under the Apache License, Version 2.0 (the "License"); % you may not use this file except in compliance with the License. % You may obtain a copy of the License at % % http://www.apache.org/licenses/LICENSE-2.0 % % Unless required by applicable law or agreed to in writing, software % distributed under the License is distributed on an "AS IS" BASIS, % WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. % See the License for the specific language governing permissions and % limitations under the License. function [layer_array, total_width] = SAI_DesignLayers( ... n_layers, width_per_layer) % function [layer_array, total_width] = SAI_DesignLayers( ... % n_layers, width_per_layer) % % The layer_array is a struct array containing an entry for each layer % in a layer of power-of-2 decimated pieces of SAI that get composited % into a log-lag SAI. % Each struct has the following fields: % .width - number of pixels occupied in the final composite SAI, % not counting the overlap into pixels counted for other layers. % .target_indices - column indices in the final composite SAI, % counting the overlap region(s). % .lag_curve - for each point in the final composite SAI, the float index % in the layer's buffer to interp from. % .alpha - the blending coefficent, mostly 1, tapering toward 0 in the overlap % region(s). % Layer 1 has no overlap to it right, and layer n_layers has none to its % left, but sizes of the target_indices, lag_curve, and alpha vectors are % otherwise width + left_overlap + right_overlap. The total width of the % final composite SAI is the sum of the widths. % Other fields could be added to hold state, such as history buffers for % each layer, or those could go in state struct array... % Elevate these to a param struct? if nargin < 1 n_layers = 11 end if nargin < 2 width_per_layer = 32; % resolution "half life" in space end future_lags = 3 * width_per_layer; width_first_layer = future_lags + 2 * width_per_layer; width_extra_last_layer = 2 * width_per_layer; left_overlap = 15; right_overlap = 15; first_window_width = 400; % or maybe use seglen? or 0.020 * fs? min_window_width = 2*width_per_layer; % or somewhere on that order window_exponent = 1.4; alpha_max = 0.5; % Start with NAP_samples_per_SAI_sample, declining to 1 from here: max_samples_per = 2^(n_layers - 1); % Construct the overall lag-warping function: NAP_samples_per_SAI_sample = [ ... max_samples_per * ones(1, width_extra_last_layer), ... max_samples_per * ... 2 .^ (-(1:(width_per_layer * (n_layers - 1))) / width_per_layer), ... ones(1, width_first_layer)]; % Each layer needs a lag_warp for a portion of that, divided by % 2^(layer-1), where the portion includes some overlap into its neighbors % with higher layer numbers on left, lower on right. % Layer 1, rightmost, representing recent, current and near-future (negative % lag) relative to trigger time, has 1 NAP sample per SAI sample. Other % layers map more than one NAP sample into 1 SAI sample. Layer 2 is % computed as 2X decimated, 2 NAP samples per SAI sample, but then gets % interpolated to between 1 and 2 (and outside that range in the overlap % regions) to connect up smoothly. Each layer is another 2X decimated. % The last layer limits out at 1 (representing 2^(n_layers) SAI samples) % at the width_extra_last_layer SAI samples that extend to the far past. layer_array = []; % to hold a struct array for layer = 1:n_layers layer_array(layer).width = width_per_layer; layer_array(layer).left_overlap = left_overlap; layer_array(layer).right_overlap = right_overlap; layer_array(layer).future_lags = 0; % Layer decimation factors: 1 1 1 1 2 2 2 4 4 4 8 ... layer_array(layer).update_interval = max(1, 2 ^ floor((layer - 2) / 3)); end % Patch up the exceptions. layer_array(1).width = width_first_layer; layer_array(end).width = layer_array(end).width + width_extra_last_layer; layer_array(1).right_overlap = 0; layer_array(end).left_overlap = 0; layer_array(1).future_lags = future_lags; % For each layer, working backwards, from left, find the locations they % they render into in the final SAI. offset = 0; for layer = n_layers:-1:1 width = layer_array(layer).width; left = layer_array(layer).left_overlap; right = layer_array(layer).right_overlap; % Size of the vectors needed. n_final_lags = left + width + right; layer_array(layer).n_final_lags = n_final_lags; % Integer indices into the final composite SAI for this layer. target_indices = ((1 - left):(width + right)) + offset; layer_array(layer).target_indices = target_indices; % Make a blending coefficient alpha, ramped in the overlap zone. alpha = ones(1, n_final_lags); alpha(1:left) = alpha(1:left) .* (1:left)/(left + 1); alpha(end + 1 - (1:right)) = ... alpha(end + 1 - (1:right)) .* (1:right)/(right + 1); layer_array(layer).alpha = alpha * alpha_max; offset = offset + width; % total width from left through this layer. end total_width = offset; % Return size of SAI this will make. % for each layer, fill in its lag-resampling function for interp1: for layer = 1:n_layers width = layer_array(layer).width; left = layer_array(layer).left_overlap; right = layer_array(layer).right_overlap; % Still need to adjust this to make lags match at edges: target_indices = layer_array(layer).target_indices; samples_per = NAP_samples_per_SAI_sample(target_indices); % Accumulate lag backwards from the zero-lag point, convert to units of % samples in the current layer. lag_curve = (cumsum(samples_per(end:-1:1))) / 2^(layer-1); lag_curve = lag_curve(end:-1:1); % Turn it back to corrent order. % Now adjust it to match the zero-lag point or a lag-point from % previous layer, and reverse it back into place. if layer == 1 lag_adjust = lag_curve(end) - 0; else % Align right edge to previous layer's left edge, adjusting for 2X % scaling factor difference. lag_adjust = lag_curve(end - right) - last_left_lag / 2; end lag_curve = lag_curve - lag_adjust; % lag_curve is now offsets from right end of layer's frame. layer_array(layer).lag_curve = lag_curve; % Specify number of point to generate in pre-warp frame. layer_array(layer).frame_width = ceil(1 + lag_curve(1)); if layer < n_layers % to avoid the left = 0 unused end case. % A point to align next layer to. last_left_lag = lag_curve(left) - layer_array(layer).future_lags; end % Specify a good window width (in history buffer, for picking triggers) % in samples for this layer, exponentially approaching minimum. layer_array(layer).window_width = round(min_window_width + ... first_window_width / window_exponent^(layer - 1)); % Say about how long the history buffer needs to be to shift any trigger % location in the range of the window to a fixed location. Assume % using two window placements overlapped 50%. n_triggers = 2; layer_array(layer).buffer_width = layer_array(layer).frame_width + ... ceil((1 + (n_triggers - 1)/2) * layer_array(layer).window_width); end return